operators.py 126.1 KB
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# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved.
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#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

# function:
#    operators to process sample,
#    eg: decode/resize/crop image

from __future__ import absolute_import
from __future__ import print_function
from __future__ import division

try:
    from collections.abc import Sequence
except Exception:
    from collections import Sequence

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from numbers import Number, Integral
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import uuid
import random
import math
import numpy as np
import os
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import copy
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import logging
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import cv2
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from PIL import Image, ImageDraw
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import pickle
import threading
MUTEX = threading.Lock()
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from ppdet.core.workspace import serializable
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from ..reader import Compose
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from .op_helper import (satisfy_sample_constraint, filter_and_process,
                        generate_sample_bbox, clip_bbox, data_anchor_sampling,
                        satisfy_sample_constraint_coverage, crop_image_sampling,
                        generate_sample_bbox_square, bbox_area_sampling,
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                        is_poly, get_border)
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from ppdet.utils.logger import setup_logger
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from ppdet.modeling.keypoint_utils import get_affine_transform, affine_transform
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logger = setup_logger(__name__)

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registered_ops = []
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def register_op(cls):
    registered_ops.append(cls.__name__)
    if not hasattr(BaseOperator, cls.__name__):
        setattr(BaseOperator, cls.__name__, cls)
    else:
        raise KeyError("The {} class has been registered.".format(cls.__name__))
    return serializable(cls)


class BboxError(ValueError):
    pass


class ImageError(ValueError):
    pass


class BaseOperator(object):
    def __init__(self, name=None):
        if name is None:
            name = self.__class__.__name__
        self._id = name + '_' + str(uuid.uuid4())[-6:]

    def apply(self, sample, context=None):
        """ Process a sample.
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        Args:
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            sample (dict): a dict of sample, eg: {'image':xx, 'label': xxx}
            context (dict): info about this sample processing
        Returns:
            result (dict): a processed sample
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        """
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        return sample
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    def __call__(self, sample, context=None):
        """ Process a sample.
        Args:
            sample (dict): a dict of sample, eg: {'image':xx, 'label': xxx}
            context (dict): info about this sample processing
        Returns:
            result (dict): a processed sample
        """
        if isinstance(sample, Sequence):
            for i in range(len(sample)):
                sample[i] = self.apply(sample[i], context)
        else:
            sample = self.apply(sample, context)
        return sample

    def __str__(self):
        return str(self._id)


@register_op
class Decode(BaseOperator):
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    def __init__(self):
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        """ Transform the image data to numpy format following the rgb format
        """
        super(Decode, self).__init__()
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    def apply(self, sample, context=None):
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        """ load image if 'im_file' field is not empty but 'image' is"""
        if 'image' not in sample:
            with open(sample['im_file'], 'rb') as f:
                sample['image'] = f.read()
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            sample.pop('im_file')
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        try:
            im = sample['image']
            data = np.frombuffer(im, dtype='uint8')
            im = cv2.imdecode(data, 1)  # BGR mode, but need RGB mode
            if 'keep_ori_im' in sample and sample['keep_ori_im']:
                sample['ori_image'] = im
            im = cv2.cvtColor(im, cv2.COLOR_BGR2RGB)
        except:
            im = sample['image']
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        sample['image'] = im
        if 'h' not in sample:
            sample['h'] = im.shape[0]
        elif sample['h'] != im.shape[0]:
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            logger.warning(
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                "The actual image height: {} is not equal to the "
                "height: {} in annotation, and update sample['h'] by actual "
                "image height.".format(im.shape[0], sample['h']))
            sample['h'] = im.shape[0]
        if 'w' not in sample:
            sample['w'] = im.shape[1]
        elif sample['w'] != im.shape[1]:
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            logger.warning(
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                "The actual image width: {} is not equal to the "
                "width: {} in annotation, and update sample['w'] by actual "
                "image width.".format(im.shape[1], sample['w']))
            sample['w'] = im.shape[1]

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        sample['im_shape'] = np.array(im.shape[:2], dtype=np.float32)
        sample['scale_factor'] = np.array([1., 1.], dtype=np.float32)
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        return sample


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def _make_dirs(dirname):
    try:
        from pathlib import Path
    except ImportError:
        from pathlib2 import Path
    Path(dirname).mkdir(exist_ok=True)


@register_op
class DecodeCache(BaseOperator):
    def __init__(self, cache_root=None):
        '''decode image and caching
        '''
        super(DecodeCache, self).__init__()

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        self.use_cache = False if cache_root is None else True
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        self.cache_root = cache_root

        if cache_root is not None:
            _make_dirs(cache_root)

    def apply(self, sample, context=None):

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        if self.use_cache and os.path.exists(
                self.cache_path(self.cache_root, sample['im_file'])):
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            path = self.cache_path(self.cache_root, sample['im_file'])
            im = self.load(path)

        else:
            if 'image' not in sample:
                with open(sample['im_file'], 'rb') as f:
                    sample['image'] = f.read()

            im = sample['image']
            data = np.frombuffer(im, dtype='uint8')
            im = cv2.imdecode(data, 1)  # BGR mode, but need RGB mode
            if 'keep_ori_im' in sample and sample['keep_ori_im']:
                sample['ori_image'] = im
            im = cv2.cvtColor(im, cv2.COLOR_BGR2RGB)

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            if self.use_cache and not os.path.exists(
                    self.cache_path(self.cache_root, sample['im_file'])):
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                path = self.cache_path(self.cache_root, sample['im_file'])
                self.dump(im, path)

        sample['image'] = im
        sample['h'] = im.shape[0]
        sample['w'] = im.shape[1]

        sample['im_shape'] = np.array(im.shape[:2], dtype=np.float32)
        sample['scale_factor'] = np.array([1., 1.], dtype=np.float32)

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        sample.pop('im_file')

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        return sample

    @staticmethod
    def cache_path(dir_oot, im_file):
        return os.path.join(dir_oot, os.path.basename(im_file) + '.pkl')

    @staticmethod
    def load(path):
        with open(path, 'rb') as f:
            im = pickle.load(f)
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        return im
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    @staticmethod
    def dump(obj, path):
        MUTEX.acquire()
        try:
            with open(path, 'wb') as f:
                pickle.dump(obj, f)

        except Exception as e:
            logger.warning('dump {} occurs exception {}'.format(path, str(e)))

        finally:
            MUTEX.release()

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@register_op
class SniperDecodeCrop(BaseOperator):
    def __init__(self):
        super(SniperDecodeCrop, self).__init__()

    def __call__(self, sample, context=None):
        if 'image' not in sample:
            with open(sample['im_file'], 'rb') as f:
                sample['image'] = f.read()
            sample.pop('im_file')

        im = sample['image']
        data = np.frombuffer(im, dtype='uint8')
        im = cv2.imdecode(data, cv2.IMREAD_COLOR)  # BGR mode, but need RGB mode
        if 'keep_ori_im' in sample and sample['keep_ori_im']:
            sample['ori_image'] = im
        im = cv2.cvtColor(im, cv2.COLOR_BGR2RGB)

        chip = sample['chip']
        x1, y1, x2, y2 = [int(xi) for xi in chip]
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        im = im[max(y1, 0):min(y2, im.shape[0]), max(x1, 0):min(x2, im.shape[
            1]), :]
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        sample['image'] = im
        h = im.shape[0]
        w = im.shape[1]
        # sample['im_info'] = [h, w, 1.0]
        sample['h'] = h
        sample['w'] = w

        sample['im_shape'] = np.array(im.shape[:2], dtype=np.float32)
        sample['scale_factor'] = np.array([1., 1.], dtype=np.float32)
        return sample


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@register_op
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class Permute(BaseOperator):
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    def __init__(self):
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        """
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        Change the channel to be (C, H, W)
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        """
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        super(Permute, self).__init__()
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    def apply(self, sample, context=None):
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        im = sample['image']
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        im = im.transpose((2, 0, 1))
        sample['image'] = im
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        return sample


@register_op
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class Lighting(BaseOperator):
    """
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    Lighting the image by eigenvalues and eigenvectors
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    Args:
        eigval (list): eigenvalues
        eigvec (list): eigenvectors
        alphastd (float): random weight of lighting, 0.1 by default
    """
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    def __init__(self, eigval, eigvec, alphastd=0.1):
        super(Lighting, self).__init__()
        self.alphastd = alphastd
        self.eigval = np.array(eigval).astype('float32')
        self.eigvec = np.array(eigvec).astype('float32')
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    def apply(self, sample, context=None):
        alpha = np.random.normal(scale=self.alphastd, size=(3, ))
        sample['image'] += np.dot(self.eigvec, self.eigval * alpha)
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        return sample


@register_op
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class RandomErasingImage(BaseOperator):
    def __init__(self, prob=0.5, lower=0.02, higher=0.4, aspect_ratio=0.3):
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        """
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        Random Erasing Data Augmentation, see https://arxiv.org/abs/1708.04896
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        Args:
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            prob (float): probability to carry out random erasing
            lower (float): lower limit of the erasing area ratio
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            higher (float): upper limit of the erasing area ratio
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            aspect_ratio (float): aspect ratio of the erasing region
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        """
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        super(RandomErasingImage, self).__init__()
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        self.prob = prob
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        self.lower = lower
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        self.higher = higher
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        self.aspect_ratio = aspect_ratio
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    def apply(self, sample):
        gt_bbox = sample['gt_bbox']
        im = sample['image']
        if not isinstance(im, np.ndarray):
            raise TypeError("{}: image is not a numpy array.".format(self))
        if len(im.shape) != 3:
            raise ImageError("{}: image is not 3-dimensional.".format(self))
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        for idx in range(gt_bbox.shape[0]):
            if self.prob <= np.random.rand():
                continue
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            x1, y1, x2, y2 = gt_bbox[idx, :]
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            w_bbox = x2 - x1
            h_bbox = y2 - y1
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            area = w_bbox * h_bbox
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            target_area = random.uniform(self.lower, self.higher) * area
            aspect_ratio = random.uniform(self.aspect_ratio,
                                          1 / self.aspect_ratio)
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            h = int(round(math.sqrt(target_area * aspect_ratio)))
            w = int(round(math.sqrt(target_area / aspect_ratio)))
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            if w < w_bbox and h < h_bbox:
                off_y1 = random.randint(0, int(h_bbox - h))
                off_x1 = random.randint(0, int(w_bbox - w))
                im[int(y1 + off_y1):int(y1 + off_y1 + h), int(x1 + off_x1):int(
                    x1 + off_x1 + w), :] = 0
        sample['image'] = im
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        return sample


@register_op
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class NormalizeImage(BaseOperator):
    def __init__(self, mean=[0.485, 0.456, 0.406], std=[1, 1, 1],
                 is_scale=True):
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        """
        Args:
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            mean (list): the pixel mean
            std (list): the pixel variance
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        """
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        super(NormalizeImage, self).__init__()
        self.mean = mean
        self.std = std
        self.is_scale = is_scale
        if not (isinstance(self.mean, list) and isinstance(self.std, list) and
                isinstance(self.is_scale, bool)):
            raise TypeError("{}: input type is invalid.".format(self))
        from functools import reduce
        if reduce(lambda x, y: x * y, self.std) == 0:
            raise ValueError('{}: std is invalid!'.format(self))
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    def apply(self, sample, context=None):
        """Normalize the image.
        Operators:
            1.(optional) Scale the image to [0,1]
            2. Each pixel minus mean and is divided by std
        """
        im = sample['image']
        im = im.astype(np.float32, copy=False)
        mean = np.array(self.mean)[np.newaxis, np.newaxis, :]
        std = np.array(self.std)[np.newaxis, np.newaxis, :]
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        if self.is_scale:
            im = im / 255.0
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        im -= mean
        im /= std
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        sample['image'] = im
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        return sample


@register_op
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class GridMask(BaseOperator):
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    def __init__(self,
                 use_h=True,
                 use_w=True,
                 rotate=1,
                 offset=False,
                 ratio=0.5,
                 mode=1,
                 prob=0.7,
                 upper_iter=360000):
        """
        GridMask Data Augmentation, see https://arxiv.org/abs/2001.04086
        Args:
            use_h (bool): whether to mask vertically
            use_w (boo;): whether to mask horizontally
            rotate (float): angle for the mask to rotate
            offset (float): mask offset
            ratio (float): mask ratio
            mode (int): gridmask mode
            prob (float): max probability to carry out gridmask
            upper_iter (int): suggested to be equal to global max_iter
        """
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        super(GridMask, self).__init__()
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        self.use_h = use_h
        self.use_w = use_w
        self.rotate = rotate
        self.offset = offset
        self.ratio = ratio
        self.mode = mode
        self.prob = prob
        self.upper_iter = upper_iter

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        from .gridmask_utils import Gridmask
        self.gridmask_op = Gridmask(
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            use_h,
            use_w,
            rotate=rotate,
            offset=offset,
            ratio=ratio,
            mode=mode,
            prob=prob,
            upper_iter=upper_iter)

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    def apply(self, sample, context=None):
        sample['image'] = self.gridmask_op(sample['image'], sample['curr_iter'])
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        return sample


@register_op
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class RandomDistort(BaseOperator):
    """Random color distortion.
    Args:
        hue (list): hue settings. in [lower, upper, probability] format.
        saturation (list): saturation settings. in [lower, upper, probability] format.
        contrast (list): contrast settings. in [lower, upper, probability] format.
        brightness (list): brightness settings. in [lower, upper, probability] format.
        random_apply (bool): whether to apply in random (yolo) or fixed (SSD)
            order.
        count (int): the number of doing distrot
        random_channel (bool): whether to swap channels randomly
    """
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    def __init__(self,
                 hue=[-18, 18, 0.5],
                 saturation=[0.5, 1.5, 0.5],
                 contrast=[0.5, 1.5, 0.5],
                 brightness=[0.5, 1.5, 0.5],
                 random_apply=True,
                 count=4,
                 random_channel=False):
        super(RandomDistort, self).__init__()
        self.hue = hue
        self.saturation = saturation
        self.contrast = contrast
        self.brightness = brightness
        self.random_apply = random_apply
        self.count = count
        self.random_channel = random_channel
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    def apply_hue(self, img):
        low, high, prob = self.hue
        if np.random.uniform(0., 1.) < prob:
            return img
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        img = img.astype(np.float32)
        # it works, but result differ from HSV version
        delta = np.random.uniform(low, high)
        u = np.cos(delta * np.pi)
        w = np.sin(delta * np.pi)
        bt = np.array([[1.0, 0.0, 0.0], [0.0, u, -w], [0.0, w, u]])
        tyiq = np.array([[0.299, 0.587, 0.114], [0.596, -0.274, -0.321],
                         [0.211, -0.523, 0.311]])
        ityiq = np.array([[1.0, 0.956, 0.621], [1.0, -0.272, -0.647],
                          [1.0, -1.107, 1.705]])
        t = np.dot(np.dot(ityiq, bt), tyiq).T
        img = np.dot(img, t)
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        return img

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    def apply_saturation(self, img):
        low, high, prob = self.saturation
        if np.random.uniform(0., 1.) < prob:
            return img
        delta = np.random.uniform(low, high)
        img = img.astype(np.float32)
        # it works, but result differ from HSV version
        gray = img * np.array([[[0.299, 0.587, 0.114]]], dtype=np.float32)
        gray = gray.sum(axis=2, keepdims=True)
        gray *= (1.0 - delta)
        img *= delta
        img += gray
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        return img

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    def apply_contrast(self, img):
        low, high, prob = self.contrast
        if np.random.uniform(0., 1.) < prob:
            return img
        delta = np.random.uniform(low, high)
        img = img.astype(np.float32)
        img *= delta
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        return img

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    def apply_brightness(self, img):
        low, high, prob = self.brightness
        if np.random.uniform(0., 1.) < prob:
            return img
        delta = np.random.uniform(low, high)
        img = img.astype(np.float32)
        img += delta
        return img
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    def apply(self, sample, context=None):
        img = sample['image']
        if self.random_apply:
            functions = [
                self.apply_brightness, self.apply_contrast,
                self.apply_saturation, self.apply_hue
            ]
            distortions = np.random.permutation(functions)[:self.count]
            for func in distortions:
                img = func(img)
            sample['image'] = img
            return sample
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        img = self.apply_brightness(img)
        mode = np.random.randint(0, 2)
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        if mode:
            img = self.apply_contrast(img)
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        img = self.apply_saturation(img)
        img = self.apply_hue(img)
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        if not mode:
            img = self.apply_contrast(img)
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        if self.random_channel:
            if np.random.randint(0, 2):
                img = img[..., np.random.permutation(3)]
        sample['image'] = img
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        return sample


@register_op
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class AutoAugment(BaseOperator):
    def __init__(self, autoaug_type="v1"):
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        """
        Args:
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            autoaug_type (str): autoaug type, support v0, v1, v2, v3, test
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        """
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        super(AutoAugment, self).__init__()
        self.autoaug_type = autoaug_type
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    def apply(self, sample, context=None):
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        """
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        Learning Data Augmentation Strategies for Object Detection, see https://arxiv.org/abs/1906.11172
        """
        im = sample['image']
        gt_bbox = sample['gt_bbox']
        if not isinstance(im, np.ndarray):
            raise TypeError("{}: image is not a numpy array.".format(self))
        if len(im.shape) != 3:
            raise ImageError("{}: image is not 3-dimensional.".format(self))
        if len(gt_bbox) == 0:
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            return sample

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        height, width, _ = im.shape
        norm_gt_bbox = np.ones_like(gt_bbox, dtype=np.float32)
        norm_gt_bbox[:, 0] = gt_bbox[:, 1] / float(height)
        norm_gt_bbox[:, 1] = gt_bbox[:, 0] / float(width)
        norm_gt_bbox[:, 2] = gt_bbox[:, 3] / float(height)
        norm_gt_bbox[:, 3] = gt_bbox[:, 2] / float(width)
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        from .autoaugment_utils import distort_image_with_autoaugment
        im, norm_gt_bbox = distort_image_with_autoaugment(im, norm_gt_bbox,
                                                          self.autoaug_type)

        gt_bbox[:, 0] = norm_gt_bbox[:, 1] * float(width)
        gt_bbox[:, 1] = norm_gt_bbox[:, 0] * float(height)
        gt_bbox[:, 2] = norm_gt_bbox[:, 3] * float(width)
        gt_bbox[:, 3] = norm_gt_bbox[:, 2] * float(height)
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        sample['image'] = im
        sample['gt_bbox'] = gt_bbox
        return sample


@register_op
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class RandomFlip(BaseOperator):
    def __init__(self, prob=0.5):
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        """
        Args:
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            prob (float): the probability of flipping image
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        """
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        super(RandomFlip, self).__init__()
        self.prob = prob
        if not (isinstance(self.prob, float)):
            raise TypeError("{}: input type is invalid.".format(self))
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    def apply_segm(self, segms, height, width):
        def _flip_poly(poly, width):
            flipped_poly = np.array(poly)
            flipped_poly[0::2] = width - np.array(poly[0::2])
            return flipped_poly.tolist()
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        def _flip_rle(rle, height, width):
            if 'counts' in rle and type(rle['counts']) == list:
                rle = mask_util.frPyObjects(rle, height, width)
            mask = mask_util.decode(rle)
            mask = mask[:, ::-1]
            rle = mask_util.encode(np.array(mask, order='F', dtype=np.uint8))
            return rle
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        flipped_segms = []
        for segm in segms:
            if is_poly(segm):
                # Polygon format
                flipped_segms.append([_flip_poly(poly, width) for poly in segm])
            else:
                # RLE format
                import pycocotools.mask as mask_util
                flipped_segms.append(_flip_rle(segm, height, width))
        return flipped_segms
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    def apply_keypoint(self, gt_keypoint, width):
        for i in range(gt_keypoint.shape[1]):
            if i % 2 == 0:
                old_x = gt_keypoint[:, i].copy()
                gt_keypoint[:, i] = width - old_x
        return gt_keypoint
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    def apply_image(self, image):
        return image[:, ::-1, :]
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    def apply_bbox(self, bbox, width):
        oldx1 = bbox[:, 0].copy()
        oldx2 = bbox[:, 2].copy()
        bbox[:, 0] = width - oldx2
        bbox[:, 2] = width - oldx1
        return bbox
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    def apply(self, sample, context=None):
        """Filp the image and bounding box.
        Operators:
            1. Flip the image numpy.
            2. Transform the bboxes' x coordinates.
              (Must judge whether the coordinates are normalized!)
            3. Transform the segmentations' x coordinates.
              (Must judge whether the coordinates are normalized!)
        Output:
            sample: the image, bounding box and segmentation part
                    in sample are flipped.
        """
        if np.random.uniform(0, 1) < self.prob:
            im = sample['image']
            height, width = im.shape[:2]
            im = self.apply_image(im)
            if 'gt_bbox' in sample and len(sample['gt_bbox']) > 0:
                sample['gt_bbox'] = self.apply_bbox(sample['gt_bbox'], width)
            if 'gt_poly' in sample and len(sample['gt_poly']) > 0:
                sample['gt_poly'] = self.apply_segm(sample['gt_poly'], height,
                                                    width)
            if 'gt_keypoint' in sample and len(sample['gt_keypoint']) > 0:
                sample['gt_keypoint'] = self.apply_keypoint(
                    sample['gt_keypoint'], width)

            if 'semantic' in sample and sample['semantic']:
                sample['semantic'] = sample['semantic'][:, ::-1]

            if 'gt_segm' in sample and sample['gt_segm'].any():
                sample['gt_segm'] = sample['gt_segm'][:, :, ::-1]

            sample['flipped'] = True
            sample['image'] = im
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        return sample


@register_op
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class Resize(BaseOperator):
    def __init__(self, target_size, keep_ratio, interp=cv2.INTER_LINEAR):
        """
        Resize image to target size. if keep_ratio is True, 
        resize the image's long side to the maximum of target_size
        if keep_ratio is False, resize the image to target size(h, w)
        Args:
            target_size (int|list): image target size
            keep_ratio (bool): whether keep_ratio or not, default true
            interp (int): the interpolation method
        """
        super(Resize, self).__init__()
        self.keep_ratio = keep_ratio
        self.interp = interp
        if not isinstance(target_size, (Integral, Sequence)):
            raise TypeError(
                "Type of target_size is invalid. Must be Integer or List or Tuple, now is {}".
                format(type(target_size)))
        if isinstance(target_size, Integral):
            target_size = [target_size, target_size]
        self.target_size = target_size
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    def apply_image(self, image, scale):
        im_scale_x, im_scale_y = scale

        return cv2.resize(
            image,
            None,
            None,
            fx=im_scale_x,
            fy=im_scale_y,
            interpolation=self.interp)

    def apply_bbox(self, bbox, scale, size):
        im_scale_x, im_scale_y = scale
        resize_w, resize_h = size
        bbox[:, 0::2] *= im_scale_x
        bbox[:, 1::2] *= im_scale_y
        bbox[:, 0::2] = np.clip(bbox[:, 0::2], 0, resize_w)
        bbox[:, 1::2] = np.clip(bbox[:, 1::2], 0, resize_h)
        return bbox

    def apply_segm(self, segms, im_size, scale):
        def _resize_poly(poly, im_scale_x, im_scale_y):
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            resized_poly = np.array(poly).astype('float32')
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            resized_poly[0::2] *= im_scale_x
            resized_poly[1::2] *= im_scale_y
            return resized_poly.tolist()

        def _resize_rle(rle, im_h, im_w, im_scale_x, im_scale_y):
            if 'counts' in rle and type(rle['counts']) == list:
                rle = mask_util.frPyObjects(rle, im_h, im_w)
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            mask = mask_util.decode(rle)
            mask = cv2.resize(
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                mask,
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                None,
                None,
                fx=im_scale_x,
                fy=im_scale_y,
                interpolation=self.interp)
            rle = mask_util.encode(np.array(mask, order='F', dtype=np.uint8))
            return rle
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        im_h, im_w = im_size
        im_scale_x, im_scale_y = scale
        resized_segms = []
        for segm in segms:
            if is_poly(segm):
                # Polygon format
                resized_segms.append([
                    _resize_poly(poly, im_scale_x, im_scale_y) for poly in segm
                ])
            else:
                # RLE format
                import pycocotools.mask as mask_util
                resized_segms.append(
                    _resize_rle(segm, im_h, im_w, im_scale_x, im_scale_y))
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        return resized_segms
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    def apply(self, sample, context=None):
        """ Resize the image numpy.
        """
        im = sample['image']
        if not isinstance(im, np.ndarray):
            raise TypeError("{}: image type is not numpy.".format(self))
        if len(im.shape) != 3:
            raise ImageError('{}: image is not 3-dimensional.'.format(self))
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        # apply image
        im_shape = im.shape
        if self.keep_ratio:
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            im_size_min = np.min(im_shape[0:2])
            im_size_max = np.max(im_shape[0:2])
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            target_size_min = np.min(self.target_size)
            target_size_max = np.max(self.target_size)
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            im_scale = min(target_size_min / im_size_min,
                           target_size_max / im_size_max)
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            resize_h = im_scale * float(im_shape[0])
            resize_w = im_scale * float(im_shape[1])
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            im_scale_x = im_scale
            im_scale_y = im_scale
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        else:
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            resize_h, resize_w = self.target_size
            im_scale_y = resize_h / im_shape[0]
            im_scale_x = resize_w / im_shape[1]

        im = self.apply_image(sample['image'], [im_scale_x, im_scale_y])
813
        sample['image'] = im.astype(np.float32)
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        sample['im_shape'] = np.asarray([resize_h, resize_w], dtype=np.float32)
        if 'scale_factor' in sample:
            scale_factor = sample['scale_factor']
            sample['scale_factor'] = np.asarray(
                [scale_factor[0] * im_scale_y, scale_factor[1] * im_scale_x],
                dtype=np.float32)
        else:
            sample['scale_factor'] = np.asarray(
                [im_scale_y, im_scale_x], dtype=np.float32)

        # apply bbox
        if 'gt_bbox' in sample and len(sample['gt_bbox']) > 0:
            sample['gt_bbox'] = self.apply_bbox(sample['gt_bbox'],
                                                [im_scale_x, im_scale_y],
                                                [resize_w, resize_h])

        # apply polygon
        if 'gt_poly' in sample and len(sample['gt_poly']) > 0:
            sample['gt_poly'] = self.apply_segm(sample['gt_poly'], im_shape[:2],
                                                [im_scale_x, im_scale_y])

        # apply semantic
        if 'semantic' in sample and sample['semantic']:
            semantic = sample['semantic']
            semantic = cv2.resize(
                semantic.astype('float32'),
                None,
                None,
                fx=im_scale_x,
                fy=im_scale_y,
                interpolation=self.interp)
            semantic = np.asarray(semantic).astype('int32')
            semantic = np.expand_dims(semantic, 0)
            sample['semantic'] = semantic

        # apply gt_segm
        if 'gt_segm' in sample and len(sample['gt_segm']) > 0:
            masks = [
                cv2.resize(
                    gt_segm,
                    None,
                    None,
                    fx=im_scale_x,
                    fy=im_scale_y,
                    interpolation=cv2.INTER_NEAREST)
                for gt_segm in sample['gt_segm']
            ]
            sample['gt_segm'] = np.asarray(masks).astype(np.uint8)
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        return sample


@register_op
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class MultiscaleTestResize(BaseOperator):
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    def __init__(self,
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                 origin_target_size=[800, 1333],
                 target_size=[],
                 interp=cv2.INTER_LINEAR,
                 use_flip=True):
        """
        Rescale image to the each size in target size, and capped at max_size.
        Args:
            origin_target_size (list): origin target size of image
            target_size (list): A list of target sizes of image.
            interp (int): the interpolation method.
            use_flip (bool): whether use flip augmentation.
        """
        super(MultiscaleTestResize, self).__init__()
        self.interp = interp
        self.use_flip = use_flip
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        if not isinstance(target_size, Sequence):
            raise TypeError(
                "Type of target_size is invalid. Must be List or Tuple, now is {}".
                format(type(target_size)))
        self.target_size = target_size
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        if not isinstance(origin_target_size, Sequence):
            raise TypeError(
                "Type of origin_target_size is invalid. Must be List or Tuple, now is {}".
                format(type(origin_target_size)))
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        self.origin_target_size = origin_target_size
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    def apply(self, sample, context=None):
        """ Resize the image numpy for multi-scale test.
        """
        samples = []
        resizer = Resize(
            self.origin_target_size, keep_ratio=True, interp=self.interp)
        samples.append(resizer(sample.copy(), context))
        if self.use_flip:
            flipper = RandomFlip(1.1)
            samples.append(flipper(sample.copy(), context=context))
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        for size in self.target_size:
            resizer = Resize(size, keep_ratio=True, interp=self.interp)
            samples.append(resizer(sample.copy(), context))
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        return samples
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@register_op
class RandomResize(BaseOperator):
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    def __init__(self,
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                 target_size,
                 keep_ratio=True,
                 interp=cv2.INTER_LINEAR,
                 random_size=True,
                 random_interp=False):
        """
        Resize image to target size randomly. random target_size and interpolation method
        Args:
            target_size (int, list, tuple): image target size, if random size is True, must be list or tuple
            keep_ratio (bool): whether keep_raio or not, default true
            interp (int): the interpolation method
            random_size (bool): whether random select target size of image
            random_interp (bool): whether random select interpolation method
        """
        super(RandomResize, self).__init__()
        self.keep_ratio = keep_ratio
        self.interp = interp
        self.interps = [
            cv2.INTER_NEAREST,
            cv2.INTER_LINEAR,
            cv2.INTER_AREA,
            cv2.INTER_CUBIC,
            cv2.INTER_LANCZOS4,
        ]
        assert isinstance(target_size, (
            Integral, Sequence)), "target_size must be Integer, List or Tuple"
        if random_size and not isinstance(target_size, Sequence):
            raise TypeError(
                "Type of target_size is invalid when random_size is True. Must be List or Tuple, now is {}".
                format(type(target_size)))
        self.target_size = target_size
        self.random_size = random_size
        self.random_interp = random_interp
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    def apply(self, sample, context=None):
        """ Resize the image numpy.
        """
        if self.random_size:
            target_size = random.choice(self.target_size)
        else:
            target_size = self.target_size
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        if self.random_interp:
            interp = random.choice(self.interps)
        else:
            interp = self.interp

        resizer = Resize(target_size, self.keep_ratio, interp)
        return resizer(sample, context=context)
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@register_op
class RandomExpand(BaseOperator):
    """Random expand the canvas.
    Args:
        ratio (float): maximum expansion ratio.
        prob (float): probability to expand.
        fill_value (list): color value used to fill the canvas. in RGB order.
    """

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    def __init__(self, ratio=4., prob=0.5, fill_value=(127.5, 127.5, 127.5)):
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        super(RandomExpand, self).__init__()
        assert ratio > 1.01, "expand ratio must be larger than 1.01"
        self.ratio = ratio
        self.prob = prob
        assert isinstance(fill_value, (Number, Sequence)), \
            "fill value must be either float or sequence"
        if isinstance(fill_value, Number):
            fill_value = (fill_value, ) * 3
        if not isinstance(fill_value, tuple):
            fill_value = tuple(fill_value)
        self.fill_value = fill_value

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    def apply(self, sample, context=None):
        if np.random.uniform(0., 1.) < self.prob:
            return sample

        im = sample['image']
        height, width = im.shape[:2]
        ratio = np.random.uniform(1., self.ratio)
        h = int(height * ratio)
        w = int(width * ratio)
        if not h > height or not w > width:
            return sample
        y = np.random.randint(0, h - height)
        x = np.random.randint(0, w - width)
        offsets, size = [x, y], [h, w]

        pad = Pad(size,
                  pad_mode=-1,
                  offsets=offsets,
                  fill_value=self.fill_value)

        return pad(sample, context=context)


@register_op
class CropWithSampling(BaseOperator):
    def __init__(self, batch_sampler, satisfy_all=False, avoid_no_bbox=True):
        """
        Args:
            batch_sampler (list): Multiple sets of different
                                  parameters for cropping.
            satisfy_all (bool): whether all boxes must satisfy.
            e.g.[[1, 1, 1.0, 1.0, 1.0, 1.0, 0.0, 1.0],
                 [1, 50, 0.3, 1.0, 0.5, 2.0, 0.1, 1.0],
                 [1, 50, 0.3, 1.0, 0.5, 2.0, 0.3, 1.0],
                 [1, 50, 0.3, 1.0, 0.5, 2.0, 0.5, 1.0],
                 [1, 50, 0.3, 1.0, 0.5, 2.0, 0.7, 1.0],
                 [1, 50, 0.3, 1.0, 0.5, 2.0, 0.9, 1.0],
                 [1, 50, 0.3, 1.0, 0.5, 2.0, 0.0, 1.0]]
           [max sample, max trial, min scale, max scale,
            min aspect ratio, max aspect ratio,
            min overlap, max overlap]
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            avoid_no_bbox (bool): whether to avoid the
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                                  situation where the box does not appear.
        """
        super(CropWithSampling, self).__init__()
        self.batch_sampler = batch_sampler
        self.satisfy_all = satisfy_all
        self.avoid_no_bbox = avoid_no_bbox

    def apply(self, sample, context):
        """
        Crop the image and modify bounding box.
        Operators:
            1. Scale the image width and height.
            2. Crop the image according to a radom sample.
            3. Rescale the bounding box.
            4. Determine if the new bbox is satisfied in the new image.
        Returns:
            sample: the image, bounding box are replaced.
        """
        assert 'image' in sample, "image data not found"
        im = sample['image']
        gt_bbox = sample['gt_bbox']
        gt_class = sample['gt_class']
        im_height, im_width = im.shape[:2]
        gt_score = None
        if 'gt_score' in sample:
            gt_score = sample['gt_score']
        sampled_bbox = []
        gt_bbox = gt_bbox.tolist()
        for sampler in self.batch_sampler:
            found = 0
            for i in range(sampler[1]):
                if found >= sampler[0]:
                    break
                sample_bbox = generate_sample_bbox(sampler)
                if satisfy_sample_constraint(sampler, sample_bbox, gt_bbox,
                                             self.satisfy_all):
                    sampled_bbox.append(sample_bbox)
                    found = found + 1
        im = np.array(im)
        while sampled_bbox:
            idx = int(np.random.uniform(0, len(sampled_bbox)))
            sample_bbox = sampled_bbox.pop(idx)
            sample_bbox = clip_bbox(sample_bbox)
            crop_bbox, crop_class, crop_score = \
                filter_and_process(sample_bbox, gt_bbox, gt_class, scores=gt_score)
            if self.avoid_no_bbox:
                if len(crop_bbox) < 1:
                    continue
            xmin = int(sample_bbox[0] * im_width)
            xmax = int(sample_bbox[2] * im_width)
            ymin = int(sample_bbox[1] * im_height)
            ymax = int(sample_bbox[3] * im_height)
            im = im[ymin:ymax, xmin:xmax]
            sample['image'] = im
            sample['gt_bbox'] = crop_bbox
            sample['gt_class'] = crop_class
            sample['gt_score'] = crop_score
            return sample
        return sample


@register_op
class CropWithDataAchorSampling(BaseOperator):
    def __init__(self,
                 batch_sampler,
                 anchor_sampler=None,
                 target_size=None,
                 das_anchor_scales=[16, 32, 64, 128],
                 sampling_prob=0.5,
                 min_size=8.,
                 avoid_no_bbox=True):
        """
        Args:
            anchor_sampler (list): anchor_sampling sets of different
                                  parameters for cropping.
            batch_sampler (list): Multiple sets of different
                                  parameters for cropping.
              e.g.[[1, 10, 1.0, 1.0, 1.0, 1.0, 0.0, 0.0, 0.2, 0.0]]
                  [[1, 50, 1.0, 1.0, 1.0, 1.0, 0.0, 0.0, 1.0, 0.0],
                   [1, 50, 0.3, 1.0, 1.0, 1.0, 0.0, 0.0, 1.0, 0.0],
                   [1, 50, 0.3, 1.0, 1.0, 1.0, 0.0, 0.0, 1.0, 0.0],
                   [1, 50, 0.3, 1.0, 1.0, 1.0, 0.0, 0.0, 1.0, 0.0],
                   [1, 50, 0.3, 1.0, 1.0, 1.0, 0.0, 0.0, 1.0, 0.0]]
              [max sample, max trial, min scale, max scale,
               min aspect ratio, max aspect ratio,
               min overlap, max overlap, min coverage, max coverage]
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            target_size (int): target image size.
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            das_anchor_scales (list[float]): a list of anchor scales in data
                anchor smapling.
            min_size (float): minimum size of sampled bbox.
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            avoid_no_bbox (bool): whether to avoid the
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                                  situation where the box does not appear.
        """
        super(CropWithDataAchorSampling, self).__init__()
        self.anchor_sampler = anchor_sampler
        self.batch_sampler = batch_sampler
        self.target_size = target_size
        self.sampling_prob = sampling_prob
        self.min_size = min_size
        self.avoid_no_bbox = avoid_no_bbox
        self.das_anchor_scales = np.array(das_anchor_scales)

    def apply(self, sample, context):
        """
        Crop the image and modify bounding box.
        Operators:
            1. Scale the image width and height.
            2. Crop the image according to a radom sample.
            3. Rescale the bounding box.
            4. Determine if the new bbox is satisfied in the new image.
        Returns:
            sample: the image, bounding box are replaced.
        """
        assert 'image' in sample, "image data not found"
        im = sample['image']
        gt_bbox = sample['gt_bbox']
        gt_class = sample['gt_class']
        image_height, image_width = im.shape[:2]
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        gt_bbox[:, 0] /= image_width
        gt_bbox[:, 1] /= image_height
        gt_bbox[:, 2] /= image_width
        gt_bbox[:, 3] /= image_height
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        gt_score = None
        if 'gt_score' in sample:
            gt_score = sample['gt_score']
        sampled_bbox = []
        gt_bbox = gt_bbox.tolist()
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        prob = np.random.uniform(0., 1.)
        if prob > self.sampling_prob:  # anchor sampling
            assert self.anchor_sampler
            for sampler in self.anchor_sampler:
                found = 0
                for i in range(sampler[1]):
                    if found >= sampler[0]:
                        break
                    sample_bbox = data_anchor_sampling(
                        gt_bbox, image_width, image_height,
                        self.das_anchor_scales, self.target_size)
                    if sample_bbox == 0:
                        break
                    if satisfy_sample_constraint_coverage(sampler, sample_bbox,
                                                          gt_bbox):
                        sampled_bbox.append(sample_bbox)
                        found = found + 1
            im = np.array(im)
            while sampled_bbox:
                idx = int(np.random.uniform(0, len(sampled_bbox)))
                sample_bbox = sampled_bbox.pop(idx)
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                if 'gt_keypoint' in sample.keys():
                    keypoints = (sample['gt_keypoint'],
                                 sample['keypoint_ignore'])
                    crop_bbox, crop_class, crop_score, gt_keypoints = \
                        filter_and_process(sample_bbox, gt_bbox, gt_class,
                                scores=gt_score,
                                keypoints=keypoints)
                else:
                    crop_bbox, crop_class, crop_score = filter_and_process(
                        sample_bbox, gt_bbox, gt_class, scores=gt_score)
                crop_bbox, crop_class, crop_score = bbox_area_sampling(
                    crop_bbox, crop_class, crop_score, self.target_size,
                    self.min_size)
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                if self.avoid_no_bbox:
                    if len(crop_bbox) < 1:
                        continue
                im = crop_image_sampling(im, sample_bbox, image_width,
                                         image_height, self.target_size)
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                height, width = im.shape[:2]
                crop_bbox[:, 0] *= width
                crop_bbox[:, 1] *= height
                crop_bbox[:, 2] *= width
                crop_bbox[:, 3] *= height
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                sample['image'] = im
                sample['gt_bbox'] = crop_bbox
                sample['gt_class'] = crop_class
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                if 'gt_score' in sample:
                    sample['gt_score'] = crop_score
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                if 'gt_keypoint' in sample.keys():
                    sample['gt_keypoint'] = gt_keypoints[0]
                    sample['keypoint_ignore'] = gt_keypoints[1]
                return sample
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            return sample

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        else:
            for sampler in self.batch_sampler:
                found = 0
                for i in range(sampler[1]):
                    if found >= sampler[0]:
                        break
                    sample_bbox = generate_sample_bbox_square(
                        sampler, image_width, image_height)
                    if satisfy_sample_constraint_coverage(sampler, sample_bbox,
                                                          gt_bbox):
                        sampled_bbox.append(sample_bbox)
                        found = found + 1
            im = np.array(im)
            while sampled_bbox:
                idx = int(np.random.uniform(0, len(sampled_bbox)))
                sample_bbox = sampled_bbox.pop(idx)
                sample_bbox = clip_bbox(sample_bbox)
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                if 'gt_keypoint' in sample.keys():
                    keypoints = (sample['gt_keypoint'],
                                 sample['keypoint_ignore'])
                    crop_bbox, crop_class, crop_score, gt_keypoints = \
                        filter_and_process(sample_bbox, gt_bbox, gt_class,
                                scores=gt_score,
                                keypoints=keypoints)
                else:
                    crop_bbox, crop_class, crop_score = filter_and_process(
                        sample_bbox, gt_bbox, gt_class, scores=gt_score)
                # sampling bbox according the bbox area
                crop_bbox, crop_class, crop_score = bbox_area_sampling(
                    crop_bbox, crop_class, crop_score, self.target_size,
                    self.min_size)
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                if self.avoid_no_bbox:
                    if len(crop_bbox) < 1:
                        continue
                xmin = int(sample_bbox[0] * image_width)
                xmax = int(sample_bbox[2] * image_width)
                ymin = int(sample_bbox[1] * image_height)
                ymax = int(sample_bbox[3] * image_height)
                im = im[ymin:ymax, xmin:xmax]
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                height, width = im.shape[:2]
                crop_bbox[:, 0] *= width
                crop_bbox[:, 1] *= height
                crop_bbox[:, 2] *= width
                crop_bbox[:, 3] *= height
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                sample['image'] = im
                sample['gt_bbox'] = crop_bbox
                sample['gt_class'] = crop_class
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                if 'gt_score' in sample:
                    sample['gt_score'] = crop_score
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                if 'gt_keypoint' in sample.keys():
                    sample['gt_keypoint'] = gt_keypoints[0]
                    sample['keypoint_ignore'] = gt_keypoints[1]
                return sample
            return sample
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@register_op
class RandomCrop(BaseOperator):
    """Random crop image and bboxes.
    Args:
        aspect_ratio (list): aspect ratio of cropped region.
            in [min, max] format.
        thresholds (list): iou thresholds for decide a valid bbox crop.
        scaling (list): ratio between a cropped region and the original image.
             in [min, max] format.
        num_attempts (int): number of tries before giving up.
        allow_no_crop (bool): allow return without actually cropping them.
        cover_all_box (bool): ensure all bboxes are covered in the final crop.
        is_mask_crop(bool): whether crop the segmentation.
    """

    def __init__(self,
                 aspect_ratio=[.5, 2.],
                 thresholds=[.0, .1, .3, .5, .7, .9],
                 scaling=[.3, 1.],
                 num_attempts=50,
                 allow_no_crop=True,
                 cover_all_box=False,
                 is_mask_crop=False):
        super(RandomCrop, self).__init__()
        self.aspect_ratio = aspect_ratio
        self.thresholds = thresholds
        self.scaling = scaling
        self.num_attempts = num_attempts
        self.allow_no_crop = allow_no_crop
        self.cover_all_box = cover_all_box
        self.is_mask_crop = is_mask_crop

    def crop_segms(self, segms, valid_ids, crop, height, width):
        def _crop_poly(segm, crop):
            xmin, ymin, xmax, ymax = crop
            crop_coord = [xmin, ymin, xmin, ymax, xmax, ymax, xmax, ymin]
            crop_p = np.array(crop_coord).reshape(4, 2)
            crop_p = Polygon(crop_p)

            crop_segm = list()
            for poly in segm:
                poly = np.array(poly).reshape(len(poly) // 2, 2)
                polygon = Polygon(poly)
                if not polygon.is_valid:
                    exterior = polygon.exterior
                    multi_lines = exterior.intersection(exterior)
                    polygons = shapely.ops.polygonize(multi_lines)
                    polygon = MultiPolygon(polygons)
                multi_polygon = list()
                if isinstance(polygon, MultiPolygon):
                    multi_polygon = copy.deepcopy(polygon)
                else:
                    multi_polygon.append(copy.deepcopy(polygon))
                for per_polygon in multi_polygon:
                    inter = per_polygon.intersection(crop_p)
                    if not inter:
                        continue
                    if isinstance(inter, (MultiPolygon, GeometryCollection)):
                        for part in inter:
                            if not isinstance(part, Polygon):
                                continue
                            part = np.squeeze(
                                np.array(part.exterior.coords[:-1]).reshape(1,
                                                                            -1))
                            part[0::2] -= xmin
                            part[1::2] -= ymin
                            crop_segm.append(part.tolist())
                    elif isinstance(inter, Polygon):
                        crop_poly = np.squeeze(
                            np.array(inter.exterior.coords[:-1]).reshape(1, -1))
                        crop_poly[0::2] -= xmin
                        crop_poly[1::2] -= ymin
                        crop_segm.append(crop_poly.tolist())
                    else:
                        continue
            return crop_segm

        def _crop_rle(rle, crop, height, width):
            if 'counts' in rle and type(rle['counts']) == list:
                rle = mask_util.frPyObjects(rle, height, width)
            mask = mask_util.decode(rle)
            mask = mask[crop[1]:crop[3], crop[0]:crop[2]]
            rle = mask_util.encode(np.array(mask, order='F', dtype=np.uint8))
            return rle

        crop_segms = []
        for id in valid_ids:
            segm = segms[id]
            if is_poly(segm):
                import copy
                import shapely.ops
                from shapely.geometry import Polygon, MultiPolygon, GeometryCollection
                logging.getLogger("shapely").setLevel(logging.WARNING)
                # Polygon format
                crop_segms.append(_crop_poly(segm, crop))
            else:
                # RLE format
                import pycocotools.mask as mask_util
                crop_segms.append(_crop_rle(segm, crop, height, width))
        return crop_segms

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    def apply(self, sample, context=None):
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        if 'gt_bbox' in sample and len(sample['gt_bbox']) == 0:
            return sample

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        h, w = sample['image'].shape[:2]
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        gt_bbox = sample['gt_bbox']

        # NOTE Original method attempts to generate one candidate for each
        # threshold then randomly sample one from the resulting list.
        # Here a short circuit approach is taken, i.e., randomly choose a
        # threshold and attempt to find a valid crop, and simply return the
        # first one found.
        # The probability is not exactly the same, kinda resembling the
        # "Monty Hall" problem. Actually carrying out the attempts will affect
        # observability (just like opening doors in the "Monty Hall" game).
        thresholds = list(self.thresholds)
        if self.allow_no_crop:
            thresholds.append('no_crop')
        np.random.shuffle(thresholds)

        for thresh in thresholds:
            if thresh == 'no_crop':
                return sample

            found = False
            for i in range(self.num_attempts):
                scale = np.random.uniform(*self.scaling)
                if self.aspect_ratio is not None:
                    min_ar, max_ar = self.aspect_ratio
                    aspect_ratio = np.random.uniform(
                        max(min_ar, scale**2), min(max_ar, scale**-2))
                    h_scale = scale / np.sqrt(aspect_ratio)
                    w_scale = scale * np.sqrt(aspect_ratio)
                else:
                    h_scale = np.random.uniform(*self.scaling)
                    w_scale = np.random.uniform(*self.scaling)
                crop_h = h * h_scale
                crop_w = w * w_scale
                if self.aspect_ratio is None:
                    if crop_h / crop_w < 0.5 or crop_h / crop_w > 2.0:
                        continue

                crop_h = int(crop_h)
                crop_w = int(crop_w)
                crop_y = np.random.randint(0, h - crop_h)
                crop_x = np.random.randint(0, w - crop_w)
                crop_box = [crop_x, crop_y, crop_x + crop_w, crop_y + crop_h]
                iou = self._iou_matrix(
                    gt_bbox, np.array(
                        [crop_box], dtype=np.float32))
                if iou.max() < thresh:
                    continue

                if self.cover_all_box and iou.min() < thresh:
                    continue

                cropped_box, valid_ids = self._crop_box_with_center_constraint(
                    gt_bbox, np.array(
                        crop_box, dtype=np.float32))
                if valid_ids.size > 0:
                    found = True
                    break

            if found:
                if self.is_mask_crop and 'gt_poly' in sample and len(sample[
                        'gt_poly']) > 0:
                    crop_polys = self.crop_segms(
                        sample['gt_poly'],
                        valid_ids,
                        np.array(
                            crop_box, dtype=np.int64),
                        h,
                        w)
                    if [] in crop_polys:
                        delete_id = list()
                        valid_polys = list()
                        for id, crop_poly in enumerate(crop_polys):
                            if crop_poly == []:
                                delete_id.append(id)
                            else:
                                valid_polys.append(crop_poly)
                        valid_ids = np.delete(valid_ids, delete_id)
                        if len(valid_polys) == 0:
                            return sample
                        sample['gt_poly'] = valid_polys
                    else:
                        sample['gt_poly'] = crop_polys
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                if 'gt_segm' in sample:
                    sample['gt_segm'] = self._crop_segm(sample['gt_segm'],
                                                        crop_box)
                    sample['gt_segm'] = np.take(
                        sample['gt_segm'], valid_ids, axis=0)

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                sample['image'] = self._crop_image(sample['image'], crop_box)
                sample['gt_bbox'] = np.take(cropped_box, valid_ids, axis=0)
                sample['gt_class'] = np.take(
                    sample['gt_class'], valid_ids, axis=0)
                if 'gt_score' in sample:
                    sample['gt_score'] = np.take(
                        sample['gt_score'], valid_ids, axis=0)

                if 'is_crowd' in sample:
                    sample['is_crowd'] = np.take(
                        sample['is_crowd'], valid_ids, axis=0)
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                if 'difficult' in sample:
                    sample['difficult'] = np.take(
                        sample['difficult'], valid_ids, axis=0)

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                return sample

        return sample

    def _iou_matrix(self, a, b):
        tl_i = np.maximum(a[:, np.newaxis, :2], b[:, :2])
        br_i = np.minimum(a[:, np.newaxis, 2:], b[:, 2:])

        area_i = np.prod(br_i - tl_i, axis=2) * (tl_i < br_i).all(axis=2)
        area_a = np.prod(a[:, 2:] - a[:, :2], axis=1)
        area_b = np.prod(b[:, 2:] - b[:, :2], axis=1)
        area_o = (area_a[:, np.newaxis] + area_b - area_i)
        return area_i / (area_o + 1e-10)

    def _crop_box_with_center_constraint(self, box, crop):
        cropped_box = box.copy()

        cropped_box[:, :2] = np.maximum(box[:, :2], crop[:2])
        cropped_box[:, 2:] = np.minimum(box[:, 2:], crop[2:])
        cropped_box[:, :2] -= crop[:2]
        cropped_box[:, 2:] -= crop[:2]

        centers = (box[:, :2] + box[:, 2:]) / 2
        valid = np.logical_and(crop[:2] <= centers,
                               centers < crop[2:]).all(axis=1)
        valid = np.logical_and(
            valid, (cropped_box[:, :2] < cropped_box[:, 2:]).all(axis=1))

        return cropped_box, np.where(valid)[0]

    def _crop_image(self, img, crop):
        x1, y1, x2, y2 = crop
        return img[y1:y2, x1:x2, :]

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    def _crop_segm(self, segm, crop):
        x1, y1, x2, y2 = crop
        return segm[:, y1:y2, x1:x2]
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@register_op
class RandomScaledCrop(BaseOperator):
    """Resize image and bbox based on long side (with optional random scaling),
       then crop or pad image to target size.
    Args:
        target_dim (int): target size.
        scale_range (list): random scale range.
        interp (int): interpolation method, default to `cv2.INTER_LINEAR`.
    """

    def __init__(self,
                 target_dim=512,
                 scale_range=[.1, 2.],
                 interp=cv2.INTER_LINEAR):
        super(RandomScaledCrop, self).__init__()
        self.target_dim = target_dim
        self.scale_range = scale_range
        self.interp = interp

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    def apply(self, sample, context=None):
        img = sample['image']
        h, w = img.shape[:2]
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        random_scale = np.random.uniform(*self.scale_range)
        dim = self.target_dim
        random_dim = int(dim * random_scale)
        dim_max = max(h, w)
        scale = random_dim / dim_max
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        resize_w = w * scale
        resize_h = h * scale
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        offset_x = int(max(0, np.random.uniform(0., resize_w - dim)))
        offset_y = int(max(0, np.random.uniform(0., resize_h - dim)))
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        img = cv2.resize(img, (resize_w, resize_h), interpolation=self.interp)
        img = np.array(img)
        canvas = np.zeros((dim, dim, 3), dtype=img.dtype)
        canvas[:min(dim, resize_h), :min(dim, resize_w), :] = img[
            offset_y:offset_y + dim, offset_x:offset_x + dim, :]
        sample['image'] = canvas
        sample['im_shape'] = np.asarray([resize_h, resize_w], dtype=np.float32)
        scale_factor = sample['sacle_factor']
        sample['scale_factor'] = np.asarray(
            [scale_factor[0] * scale, scale_factor[1] * scale],
            dtype=np.float32)

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        if 'gt_bbox' in sample and len(sample['gt_bbox']) > 0:
            scale_array = np.array([scale, scale] * 2, dtype=np.float32)
            shift_array = np.array([offset_x, offset_y] * 2, dtype=np.float32)
            boxes = sample['gt_bbox'] * scale_array - shift_array
            boxes = np.clip(boxes, 0, dim - 1)
            # filter boxes with no area
            area = np.prod(boxes[..., 2:] - boxes[..., :2], axis=1)
            valid = (area > 1.).nonzero()[0]
            sample['gt_bbox'] = boxes[valid]
            sample['gt_class'] = sample['gt_class'][valid]

        return sample


@register_op
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class Cutmix(BaseOperator):
    def __init__(self, alpha=1.5, beta=1.5):
        """ 
        CutMix: Regularization Strategy to Train Strong Classifiers with Localizable Features, see https://arxiv.org/abs/1905.04899
        Cutmix image and gt_bbbox/gt_score
        Args:
             alpha (float): alpha parameter of beta distribute
             beta (float): beta parameter of beta distribute
        """
        super(Cutmix, self).__init__()
        self.alpha = alpha
        self.beta = beta
        if self.alpha <= 0.0:
            raise ValueError("alpha shold be positive in {}".format(self))
        if self.beta <= 0.0:
            raise ValueError("beta shold be positive in {}".format(self))
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    def apply_image(self, img1, img2, factor):
        """ _rand_bbox """
        h = max(img1.shape[0], img2.shape[0])
        w = max(img1.shape[1], img2.shape[1])
        cut_rat = np.sqrt(1. - factor)
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        cut_w = np.int32(w * cut_rat)
        cut_h = np.int32(h * cut_rat)
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        # uniform
        cx = np.random.randint(w)
        cy = np.random.randint(h)

        bbx1 = np.clip(cx - cut_w // 2, 0, w - 1)
        bby1 = np.clip(cy - cut_h // 2, 0, h - 1)
        bbx2 = np.clip(cx + cut_w // 2, 0, w - 1)
        bby2 = np.clip(cy + cut_h // 2, 0, h - 1)

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        img_1_pad = np.zeros((h, w, img1.shape[2]), 'float32')
        img_1_pad[:img1.shape[0], :img1.shape[1], :] = \
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            img1.astype('float32')
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        img_2_pad = np.zeros((h, w, img2.shape[2]), 'float32')
        img_2_pad[:img2.shape[0], :img2.shape[1], :] = \
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            img2.astype('float32')
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        img_1_pad[bby1:bby2, bbx1:bbx2, :] = img_2_pad[bby1:bby2, bbx1:bbx2, :]
        return img_1_pad
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    def __call__(self, sample, context=None):
        if not isinstance(sample, Sequence):
            return sample

        assert len(sample) == 2, 'cutmix need two samples'

        factor = np.random.beta(self.alpha, self.beta)
        factor = max(0.0, min(1.0, factor))
        if factor >= 1.0:
            return sample[0]
        if factor <= 0.0:
            return sample[1]
        img1 = sample[0]['image']
        img2 = sample[1]['image']
        img = self.apply_image(img1, img2, factor)
        gt_bbox1 = sample[0]['gt_bbox']
        gt_bbox2 = sample[1]['gt_bbox']
        gt_bbox = np.concatenate((gt_bbox1, gt_bbox2), axis=0)
        gt_class1 = sample[0]['gt_class']
        gt_class2 = sample[1]['gt_class']
        gt_class = np.concatenate((gt_class1, gt_class2), axis=0)
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        gt_score1 = np.ones_like(sample[0]['gt_class'])
        gt_score2 = np.ones_like(sample[1]['gt_class'])
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        gt_score = np.concatenate(
            (gt_score1 * factor, gt_score2 * (1. - factor)), axis=0)
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        result = copy.deepcopy(sample[0])
        result['image'] = img
        result['gt_bbox'] = gt_bbox
        result['gt_score'] = gt_score
        result['gt_class'] = gt_class
        if 'is_crowd' in sample[0]:
            is_crowd1 = sample[0]['is_crowd']
            is_crowd2 = sample[1]['is_crowd']
            is_crowd = np.concatenate((is_crowd1, is_crowd2), axis=0)
            result['is_crowd'] = is_crowd
        if 'difficult' in sample[0]:
            is_difficult1 = sample[0]['difficult']
            is_difficult2 = sample[1]['difficult']
            is_difficult = np.concatenate(
                (is_difficult1, is_difficult2), axis=0)
            result['difficult'] = is_difficult
        return result
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@register_op
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class Mixup(BaseOperator):
    def __init__(self, alpha=1.5, beta=1.5):
        """ Mixup image and gt_bbbox/gt_score
        Args:
            alpha (float): alpha parameter of beta distribute
            beta (float): beta parameter of beta distribute
        """
        super(Mixup, self).__init__()
        self.alpha = alpha
        self.beta = beta
        if self.alpha <= 0.0:
            raise ValueError("alpha shold be positive in {}".format(self))
        if self.beta <= 0.0:
            raise ValueError("beta shold be positive in {}".format(self))
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    def apply_image(self, img1, img2, factor):
        h = max(img1.shape[0], img2.shape[0])
        w = max(img1.shape[1], img2.shape[1])
        img = np.zeros((h, w, img1.shape[2]), 'float32')
        img[:img1.shape[0], :img1.shape[1], :] = \
            img1.astype('float32') * factor
        img[:img2.shape[0], :img2.shape[1], :] += \
            img2.astype('float32') * (1.0 - factor)
        return img.astype('uint8')

    def __call__(self, sample, context=None):
        if not isinstance(sample, Sequence):
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            return sample

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        assert len(sample) == 2, 'mixup need two samples'

        factor = np.random.beta(self.alpha, self.beta)
        factor = max(0.0, min(1.0, factor))
        if factor >= 1.0:
            return sample[0]
        if factor <= 0.0:
            return sample[1]
        im = self.apply_image(sample[0]['image'], sample[1]['image'], factor)
        result = copy.deepcopy(sample[0])
        result['image'] = im
        # apply bbox and score
        if 'gt_bbox' in sample[0]:
            gt_bbox1 = sample[0]['gt_bbox']
            gt_bbox2 = sample[1]['gt_bbox']
            gt_bbox = np.concatenate((gt_bbox1, gt_bbox2), axis=0)
            result['gt_bbox'] = gt_bbox
        if 'gt_class' in sample[0]:
            gt_class1 = sample[0]['gt_class']
            gt_class2 = sample[1]['gt_class']
            gt_class = np.concatenate((gt_class1, gt_class2), axis=0)
            result['gt_class'] = gt_class

            gt_score1 = np.ones_like(sample[0]['gt_class'])
            gt_score2 = np.ones_like(sample[1]['gt_class'])
            gt_score = np.concatenate(
                (gt_score1 * factor, gt_score2 * (1. - factor)), axis=0)
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            result['gt_score'] = gt_score.astype('float32')
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        if 'is_crowd' in sample[0]:
            is_crowd1 = sample[0]['is_crowd']
            is_crowd2 = sample[1]['is_crowd']
            is_crowd = np.concatenate((is_crowd1, is_crowd2), axis=0)
            result['is_crowd'] = is_crowd
        if 'difficult' in sample[0]:
            is_difficult1 = sample[0]['difficult']
            is_difficult2 = sample[1]['difficult']
            is_difficult = np.concatenate(
                (is_difficult1, is_difficult2), axis=0)
            result['difficult'] = is_difficult

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        if 'gt_ide' in sample[0]:
            gt_ide1 = sample[0]['gt_ide']
            gt_ide2 = sample[1]['gt_ide']
            gt_ide = np.concatenate((gt_ide1, gt_ide2), axis=0)
            result['gt_ide'] = gt_ide
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        return result


@register_op
class NormalizeBox(BaseOperator):
    """Transform the bounding box's coornidates to [0,1]."""

    def __init__(self):
        super(NormalizeBox, self).__init__()

    def apply(self, sample, context):
        im = sample['image']
        gt_bbox = sample['gt_bbox']
        height, width, _ = im.shape
        for i in range(gt_bbox.shape[0]):
            gt_bbox[i][0] = gt_bbox[i][0] / width
            gt_bbox[i][1] = gt_bbox[i][1] / height
            gt_bbox[i][2] = gt_bbox[i][2] / width
            gt_bbox[i][3] = gt_bbox[i][3] / height
        sample['gt_bbox'] = gt_bbox

        if 'gt_keypoint' in sample.keys():
            gt_keypoint = sample['gt_keypoint']

            for i in range(gt_keypoint.shape[1]):
                if i % 2:
                    gt_keypoint[:, i] = gt_keypoint[:, i] / height
                else:
                    gt_keypoint[:, i] = gt_keypoint[:, i] / width
            sample['gt_keypoint'] = gt_keypoint

        return sample


@register_op
class BboxXYXY2XYWH(BaseOperator):
    """
    Convert bbox XYXY format to XYWH format.
    """

    def __init__(self):
        super(BboxXYXY2XYWH, self).__init__()

    def apply(self, sample, context=None):
        assert 'gt_bbox' in sample
        bbox = sample['gt_bbox']
        bbox[:, 2:4] = bbox[:, 2:4] - bbox[:, :2]
        bbox[:, :2] = bbox[:, :2] + bbox[:, 2:4] / 2.
        sample['gt_bbox'] = bbox
        return sample


@register_op
class PadBox(BaseOperator):
    def __init__(self, num_max_boxes=50):
        """
        Pad zeros to bboxes if number of bboxes is less than num_max_boxes.
        Args:
            num_max_boxes (int): the max number of bboxes
        """
        self.num_max_boxes = num_max_boxes
        super(PadBox, self).__init__()
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    def apply(self, sample, context=None):
        assert 'gt_bbox' in sample
        bbox = sample['gt_bbox']
        gt_num = min(self.num_max_boxes, len(bbox))
        num_max = self.num_max_boxes
        # fields = context['fields'] if context else []
        pad_bbox = np.zeros((num_max, 4), dtype=np.float32)
        if gt_num > 0:
            pad_bbox[:gt_num, :] = bbox[:gt_num, :]
        sample['gt_bbox'] = pad_bbox
        if 'gt_class' in sample:
            pad_class = np.zeros((num_max, ), dtype=np.int32)
            if gt_num > 0:
                pad_class[:gt_num] = sample['gt_class'][:gt_num, 0]
            sample['gt_class'] = pad_class
        if 'gt_score' in sample:
            pad_score = np.zeros((num_max, ), dtype=np.float32)
            if gt_num > 0:
                pad_score[:gt_num] = sample['gt_score'][:gt_num, 0]
            sample['gt_score'] = pad_score
        # in training, for example in op ExpandImage,
        # the bbox and gt_class is expandded, but the difficult is not,
        # so, judging by it's length
        if 'difficult' in sample:
            pad_diff = np.zeros((num_max, ), dtype=np.int32)
            if gt_num > 0:
                pad_diff[:gt_num] = sample['difficult'][:gt_num, 0]
            sample['difficult'] = pad_diff
        if 'is_crowd' in sample:
            pad_crowd = np.zeros((num_max, ), dtype=np.int32)
            if gt_num > 0:
                pad_crowd[:gt_num] = sample['is_crowd'][:gt_num, 0]
            sample['is_crowd'] = pad_crowd
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        if 'gt_ide' in sample:
            pad_ide = np.zeros((num_max, ), dtype=np.int32)
            if gt_num > 0:
                pad_ide[:gt_num] = sample['gt_ide'][:gt_num, 0]
            sample['gt_ide'] = pad_ide
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        return sample


@register_op
class DebugVisibleImage(BaseOperator):
    """
    In debug mode, visualize images according to `gt_box`.
    (Currently only supported when not cropping and flipping image.)
    """

    def __init__(self, output_dir='output/debug', is_normalized=False):
        super(DebugVisibleImage, self).__init__()
        self.is_normalized = is_normalized
        self.output_dir = output_dir
        if not os.path.isdir(output_dir):
            os.makedirs(output_dir)
        if not isinstance(self.is_normalized, bool):
            raise TypeError("{}: input type is invalid.".format(self))

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    def apply(self, sample, context=None):
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        image = Image.fromarray(sample['image'].astype(np.uint8))
        out_file_name = '{:012d}.jpg'.format(sample['im_id'][0])
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        width = sample['w']
        height = sample['h']
        gt_bbox = sample['gt_bbox']
        gt_class = sample['gt_class']
        draw = ImageDraw.Draw(image)
        for i in range(gt_bbox.shape[0]):
            if self.is_normalized:
                gt_bbox[i][0] = gt_bbox[i][0] * width
                gt_bbox[i][1] = gt_bbox[i][1] * height
                gt_bbox[i][2] = gt_bbox[i][2] * width
                gt_bbox[i][3] = gt_bbox[i][3] * height

            xmin, ymin, xmax, ymax = gt_bbox[i]
            draw.line(
                [(xmin, ymin), (xmin, ymax), (xmax, ymax), (xmax, ymin),
                 (xmin, ymin)],
                width=2,
                fill='green')
            # draw label
            text = str(gt_class[i][0])
            tw, th = draw.textsize(text)
            draw.rectangle(
                [(xmin + 1, ymin - th), (xmin + tw + 1, ymin)], fill='green')
            draw.text((xmin + 1, ymin - th), text, fill=(255, 255, 255))

        if 'gt_keypoint' in sample.keys():
            gt_keypoint = sample['gt_keypoint']
            if self.is_normalized:
                for i in range(gt_keypoint.shape[1]):
                    if i % 2:
                        gt_keypoint[:, i] = gt_keypoint[:, i] * height
                    else:
                        gt_keypoint[:, i] = gt_keypoint[:, i] * width
            for i in range(gt_keypoint.shape[0]):
                keypoint = gt_keypoint[i]
                for j in range(int(keypoint.shape[0] / 2)):
                    x1 = round(keypoint[2 * j]).astype(np.int32)
                    y1 = round(keypoint[2 * j + 1]).astype(np.int32)
                    draw.ellipse(
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                        (x1, y1, x1 + 5, y1 + 5), fill='green', outline='green')
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        save_path = os.path.join(self.output_dir, out_file_name)
        image.save(save_path, quality=95)
        return sample
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@register_op
class Pad(BaseOperator):
    def __init__(self,
                 size=None,
                 size_divisor=32,
                 pad_mode=0,
                 offsets=None,
                 fill_value=(127.5, 127.5, 127.5)):
        """
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        Pad image to a specified size or multiple of size_divisor.
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        Args:
            size (int, Sequence): image target size, if None, pad to multiple of size_divisor, default None
            size_divisor (int): size divisor, default 32
            pad_mode (int): pad mode, currently only supports four modes [-1, 0, 1, 2]. if -1, use specified offsets
                if 0, only pad to right and bottom. if 1, pad according to center. if 2, only pad left and top
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            offsets (list): [offset_x, offset_y], specify offset while padding, only supported pad_mode=-1
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            fill_value (bool): rgb value of pad area, default (127.5, 127.5, 127.5)
        """
        super(Pad, self).__init__()

        if not isinstance(size, (int, Sequence)):
            raise TypeError(
                "Type of target_size is invalid when random_size is True. \
                            Must be List, now is {}".format(type(size)))

        if isinstance(size, int):
            size = [size, size]

        assert pad_mode in [
            -1, 0, 1, 2
        ], 'currently only supports four modes [-1, 0, 1, 2]'
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        if pad_mode == -1:
            assert offsets, 'if pad_mode is -1, offsets should not be None'
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        self.size = size
        self.size_divisor = size_divisor
        self.pad_mode = pad_mode
        self.fill_value = fill_value
        self.offsets = offsets

    def apply_segm(self, segms, offsets, im_size, size):
        def _expand_poly(poly, x, y):
            expanded_poly = np.array(poly)
            expanded_poly[0::2] += x
            expanded_poly[1::2] += y
            return expanded_poly.tolist()

        def _expand_rle(rle, x, y, height, width, h, w):
            if 'counts' in rle and type(rle['counts']) == list:
                rle = mask_util.frPyObjects(rle, height, width)
            mask = mask_util.decode(rle)
            expanded_mask = np.full((h, w), 0).astype(mask.dtype)
            expanded_mask[y:y + height, x:x + width] = mask
            rle = mask_util.encode(
                np.array(
                    expanded_mask, order='F', dtype=np.uint8))
            return rle

        x, y = offsets
        height, width = im_size
        h, w = size
        expanded_segms = []
        for segm in segms:
            if is_poly(segm):
                # Polygon format
                expanded_segms.append(
                    [_expand_poly(poly, x, y) for poly in segm])
            else:
                # RLE format
                import pycocotools.mask as mask_util
                expanded_segms.append(
                    _expand_rle(segm, x, y, height, width, h, w))
        return expanded_segms

    def apply_bbox(self, bbox, offsets):
        return bbox + np.array(offsets * 2, dtype=np.float32)

    def apply_keypoint(self, keypoints, offsets):
        n = len(keypoints[0]) // 2
        return keypoints + np.array(offsets * n, dtype=np.float32)

    def apply_image(self, image, offsets, im_size, size):
        x, y = offsets
        im_h, im_w = im_size
        h, w = size
        canvas = np.ones((h, w, 3), dtype=np.float32)
        canvas *= np.array(self.fill_value, dtype=np.float32)
        canvas[y:y + im_h, x:x + im_w, :] = image.astype(np.float32)
        return canvas

    def apply(self, sample, context=None):
        im = sample['image']
        im_h, im_w = im.shape[:2]
        if self.size:
            h, w = self.size
            assert (
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                im_h <= h and im_w <= w
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            ), '(h, w) of target size should be greater than (im_h, im_w)'
        else:
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            h = int(np.ceil(im_h / self.size_divisor) * self.size_divisor)
            w = int(np.ceil(im_w / self.size_divisor) * self.size_divisor)
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        if h == im_h and w == im_w:
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            sample['image'] = im.astype(np.float32)
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            return sample

        if self.pad_mode == -1:
            offset_x, offset_y = self.offsets
        elif self.pad_mode == 0:
            offset_y, offset_x = 0, 0
        elif self.pad_mode == 1:
            offset_y, offset_x = (h - im_h) // 2, (w - im_w) // 2
        else:
            offset_y, offset_x = h - im_h, w - im_w

        offsets, im_size, size = [offset_x, offset_y], [im_h, im_w], [h, w]

        sample['image'] = self.apply_image(im, offsets, im_size, size)

        if self.pad_mode == 0:
            return sample
        if 'gt_bbox' in sample and len(sample['gt_bbox']) > 0:
            sample['gt_bbox'] = self.apply_bbox(sample['gt_bbox'], offsets)

        if 'gt_poly' in sample and len(sample['gt_poly']) > 0:
            sample['gt_poly'] = self.apply_segm(sample['gt_poly'], offsets,
                                                im_size, size)

        if 'gt_keypoint' in sample and len(sample['gt_keypoint']) > 0:
            sample['gt_keypoint'] = self.apply_keypoint(sample['gt_keypoint'],
                                                        offsets)

        return sample


@register_op
class Poly2Mask(BaseOperator):
    """
    gt poly to mask annotations
    """

    def __init__(self):
        super(Poly2Mask, self).__init__()
        import pycocotools.mask as maskUtils
        self.maskutils = maskUtils

    def _poly2mask(self, mask_ann, img_h, img_w):
        if isinstance(mask_ann, list):
            # polygon -- a single object might consist of multiple parts
            # we merge all parts into one mask rle code
            rles = self.maskutils.frPyObjects(mask_ann, img_h, img_w)
            rle = self.maskutils.merge(rles)
        elif isinstance(mask_ann['counts'], list):
            # uncompressed RLE
            rle = self.maskutils.frPyObjects(mask_ann, img_h, img_w)
        else:
            # rle
            rle = mask_ann
        mask = self.maskutils.decode(rle)
        return mask

    def apply(self, sample, context=None):
        assert 'gt_poly' in sample
        im_h = sample['h']
        im_w = sample['w']
        masks = [
            self._poly2mask(gt_poly, im_h, im_w)
            for gt_poly in sample['gt_poly']
        ]
        sample['gt_segm'] = np.asarray(masks).astype(np.uint8)
        return sample
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@register_op
class AugmentHSV(BaseOperator):
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    """ 
    Augment the SV channel of image data.
    Args:
        fraction (float): the fraction for augment. Default: 0.5.
        is_bgr (bool): whether the image is BGR mode. Default: True.
        hgain (float): H channel gains
        sgain (float): S channel gains
        vgain (float): V channel gains
    """

    def __init__(self,
                 fraction=0.50,
                 is_bgr=True,
                 hgain=None,
                 sgain=None,
                 vgain=None):
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        super(AugmentHSV, self).__init__()
        self.fraction = fraction
        self.is_bgr = is_bgr
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        self.hgain = hgain
        self.sgain = sgain
        self.vgain = vgain
        self.use_hsvgain = False if hgain is None else True
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    def apply(self, sample, context=None):
        img = sample['image']
        if self.is_bgr:
            img_hsv = cv2.cvtColor(img, cv2.COLOR_BGR2HSV)
        else:
            img_hsv = cv2.cvtColor(img, cv2.COLOR_RGB2HSV)

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        if self.use_hsvgain:
            hsv_augs = np.random.uniform(
                -1, 1, 3) * [self.hgain, self.sgain, self.vgain]
            # random selection of h, s, v
            hsv_augs *= np.random.randint(0, 2, 3)
            img_hsv[..., 0] = (img_hsv[..., 0] + hsv_augs[0]) % 180
            img_hsv[..., 1] = np.clip(img_hsv[..., 1] + hsv_augs[1], 0, 255)
            img_hsv[..., 2] = np.clip(img_hsv[..., 2] + hsv_augs[2], 0, 255)
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        else:
            S = img_hsv[:, :, 1].astype(np.float32)
            V = img_hsv[:, :, 2].astype(np.float32)

            a = (random.random() * 2 - 1) * self.fraction + 1
            S *= a
            if a > 1:
                np.clip(S, a_min=0, a_max=255, out=S)

            a = (random.random() * 2 - 1) * self.fraction + 1
            V *= a
            if a > 1:
                np.clip(V, a_min=0, a_max=255, out=V)

            img_hsv[:, :, 1] = S.astype(np.uint8)
            img_hsv[:, :, 2] = V.astype(np.uint8)
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        if self.is_bgr:
            cv2.cvtColor(img_hsv, cv2.COLOR_HSV2BGR, dst=img)
        else:
            cv2.cvtColor(img_hsv, cv2.COLOR_HSV2RGB, dst=img)

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        sample['image'] = img.astype(np.float32)
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        return sample


@register_op
class Norm2PixelBbox(BaseOperator):
    """
    Transform the bounding box's coornidates which is in [0,1] to pixels.
    """

    def __init__(self):
        super(Norm2PixelBbox, self).__init__()

    def apply(self, sample, context=None):
        assert 'gt_bbox' in sample
        bbox = sample['gt_bbox']
        height, width = sample['image'].shape[:2]
        bbox[:, 0::2] = bbox[:, 0::2] * width
        bbox[:, 1::2] = bbox[:, 1::2] * height
        sample['gt_bbox'] = bbox
        return sample


@register_op
class BboxCXCYWH2XYXY(BaseOperator):
    """
    Convert bbox CXCYWH format to XYXY format.
    [center_x, center_y, width, height] -> [x0, y0, x1, y1]
    """

    def __init__(self):
        super(BboxCXCYWH2XYXY, self).__init__()

    def apply(self, sample, context=None):
        assert 'gt_bbox' in sample
        bbox0 = sample['gt_bbox']
        bbox = bbox0.copy()

        bbox[:, :2] = bbox0[:, :2] - bbox0[:, 2:4] / 2.
        bbox[:, 2:4] = bbox0[:, :2] + bbox0[:, 2:4] / 2.
        sample['gt_bbox'] = bbox
        return sample
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@register_op
class RandomResizeCrop(BaseOperator):
    """Random resize and crop image and bboxes.
    Args:
        resizes (list): resize image to one of resizes. if keep_ratio is True and mode is
        'long', resize the image's long side to the maximum of target_size, if keep_ratio is
        True and mode is 'short', resize the image's short side to the minimum of target_size.
        cropsizes (list): crop sizes after resize, [(min_crop_1, max_crop_1), ...]
        mode (str): resize mode, `long` or `short`. Details see resizes. 
        prob (float): probability of this op.
        keep_ratio (bool): whether keep_ratio or not, default true
        interp (int): the interpolation method
        thresholds (list): iou thresholds for decide a valid bbox crop.
        num_attempts (int): number of tries before giving up.
        allow_no_crop (bool): allow return without actually cropping them.
        cover_all_box (bool): ensure all bboxes are covered in the final crop.
        is_mask_crop(bool): whether crop the segmentation.
    """

    def __init__(
            self,
            resizes,
            cropsizes,
            prob=0.5,
            mode='short',
            keep_ratio=True,
            interp=cv2.INTER_LINEAR,
            num_attempts=3,
            cover_all_box=False,
            allow_no_crop=False,
            thresholds=[0.3, 0.5, 0.7],
            is_mask_crop=False, ):
        super(RandomResizeCrop, self).__init__()

        self.resizes = resizes
        self.cropsizes = cropsizes
        self.prob = prob
        self.mode = mode

        self.resizer = Resize(0, keep_ratio=keep_ratio, interp=interp)
        self.croper = RandomCrop(
            num_attempts=num_attempts,
            cover_all_box=cover_all_box,
            thresholds=thresholds,
            allow_no_crop=allow_no_crop,
            is_mask_crop=is_mask_crop)

    def _format_size(self, size):
        if isinstance(size, Integral):
            size = (size, size)
        return size

    def apply(self, sample, context=None):
        if random.random() < self.prob:
            _resize = self._format_size(random.choice(self.resizes))
            _cropsize = self._format_size(random.choice(self.cropsizes))
            sample = self._resize(
                self.resizer,
                sample,
                size=_resize,
                mode=self.mode,
                context=context)
            sample = self._random_crop(
                self.croper, sample, size=_cropsize, context=context)
        return sample

    @staticmethod
    def _random_crop(croper, sample, size, context=None):
        if 'gt_bbox' in sample and len(sample['gt_bbox']) == 0:
            return sample

        self = croper
        h, w = sample['image'].shape[:2]
        gt_bbox = sample['gt_bbox']
        cropsize = size
        min_crop = min(cropsize)
        max_crop = max(cropsize)

        thresholds = list(self.thresholds)
        np.random.shuffle(thresholds)

        for thresh in thresholds:
            found = False
            for _ in range(self.num_attempts):

                crop_h = random.randint(min_crop, min(h, max_crop))
                crop_w = random.randint(min_crop, min(w, max_crop))

                crop_y = random.randint(0, h - crop_h)
                crop_x = random.randint(0, w - crop_w)

                crop_box = [crop_x, crop_y, crop_x + crop_w, crop_y + crop_h]
                iou = self._iou_matrix(
                    gt_bbox, np.array(
                        [crop_box], dtype=np.float32))
                if iou.max() < thresh:
                    continue

                if self.cover_all_box and iou.min() < thresh:
                    continue

                cropped_box, valid_ids = self._crop_box_with_center_constraint(
                    gt_bbox, np.array(
                        crop_box, dtype=np.float32))
                if valid_ids.size > 0:
                    found = True
                    break

            if found:
                if self.is_mask_crop and 'gt_poly' in sample and len(sample[
                        'gt_poly']) > 0:
                    crop_polys = self.crop_segms(
                        sample['gt_poly'],
                        valid_ids,
                        np.array(
                            crop_box, dtype=np.int64),
                        h,
                        w)
                    if [] in crop_polys:
                        delete_id = list()
                        valid_polys = list()
                        for id, crop_poly in enumerate(crop_polys):
                            if crop_poly == []:
                                delete_id.append(id)
                            else:
                                valid_polys.append(crop_poly)
                        valid_ids = np.delete(valid_ids, delete_id)
                        if len(valid_polys) == 0:
                            return sample
                        sample['gt_poly'] = valid_polys
                    else:
                        sample['gt_poly'] = crop_polys

                if 'gt_segm' in sample:
                    sample['gt_segm'] = self._crop_segm(sample['gt_segm'],
                                                        crop_box)
                    sample['gt_segm'] = np.take(
                        sample['gt_segm'], valid_ids, axis=0)

                sample['image'] = self._crop_image(sample['image'], crop_box)
                sample['gt_bbox'] = np.take(cropped_box, valid_ids, axis=0)
                sample['gt_class'] = np.take(
                    sample['gt_class'], valid_ids, axis=0)
                if 'gt_score' in sample:
                    sample['gt_score'] = np.take(
                        sample['gt_score'], valid_ids, axis=0)

                if 'is_crowd' in sample:
                    sample['is_crowd'] = np.take(
                        sample['is_crowd'], valid_ids, axis=0)
                return sample

        return sample

    @staticmethod
    def _resize(resizer, sample, size, mode='short', context=None):
        self = resizer
        im = sample['image']
        target_size = size

        if not isinstance(im, np.ndarray):
            raise TypeError("{}: image type is not numpy.".format(self))
        if len(im.shape) != 3:
            raise ImageError('{}: image is not 3-dimensional.'.format(self))

        # apply image
        im_shape = im.shape
        if self.keep_ratio:

            im_size_min = np.min(im_shape[0:2])
            im_size_max = np.max(im_shape[0:2])

            target_size_min = np.min(target_size)
            target_size_max = np.max(target_size)

            if mode == 'long':
                im_scale = min(target_size_min / im_size_min,
                               target_size_max / im_size_max)
            else:
                im_scale = max(target_size_min / im_size_min,
                               target_size_max / im_size_max)

            resize_h = im_scale * float(im_shape[0])
            resize_w = im_scale * float(im_shape[1])

            im_scale_x = im_scale
            im_scale_y = im_scale
        else:
            resize_h, resize_w = target_size
            im_scale_y = resize_h / im_shape[0]
            im_scale_x = resize_w / im_shape[1]

        im = self.apply_image(sample['image'], [im_scale_x, im_scale_y])
        sample['image'] = im
        sample['im_shape'] = np.asarray([resize_h, resize_w], dtype=np.float32)
        if 'scale_factor' in sample:
            scale_factor = sample['scale_factor']
            sample['scale_factor'] = np.asarray(
                [scale_factor[0] * im_scale_y, scale_factor[1] * im_scale_x],
                dtype=np.float32)
        else:
            sample['scale_factor'] = np.asarray(
                [im_scale_y, im_scale_x], dtype=np.float32)

        # apply bbox
        if 'gt_bbox' in sample and len(sample['gt_bbox']) > 0:
            sample['gt_bbox'] = self.apply_bbox(sample['gt_bbox'],
                                                [im_scale_x, im_scale_y],
                                                [resize_w, resize_h])

        # apply polygon
        if 'gt_poly' in sample and len(sample['gt_poly']) > 0:
            sample['gt_poly'] = self.apply_segm(sample['gt_poly'], im_shape[:2],
                                                [im_scale_x, im_scale_y])

        # apply semantic
        if 'semantic' in sample and sample['semantic']:
            semantic = sample['semantic']
            semantic = cv2.resize(
                semantic.astype('float32'),
                None,
                None,
                fx=im_scale_x,
                fy=im_scale_y,
                interpolation=self.interp)
            semantic = np.asarray(semantic).astype('int32')
            semantic = np.expand_dims(semantic, 0)
            sample['semantic'] = semantic

        # apply gt_segm
        if 'gt_segm' in sample and len(sample['gt_segm']) > 0:
            masks = [
                cv2.resize(
                    gt_segm,
                    None,
                    None,
                    fx=im_scale_x,
                    fy=im_scale_y,
                    interpolation=cv2.INTER_NEAREST)
                for gt_segm in sample['gt_segm']
            ]
            sample['gt_segm'] = np.asarray(masks).astype(np.uint8)
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        return sample


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@register_op
class RandomSelect(BaseOperator):
    """
    Randomly choose a transformation between transforms1 and transforms2,
    and the probability of choosing transforms1 is p.
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    The code is based on https://github.com/facebookresearch/detr/blob/main/datasets/transforms.py

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    """

    def __init__(self, transforms1, transforms2, p=0.5):
        super(RandomSelect, self).__init__()
        self.transforms1 = Compose(transforms1)
        self.transforms2 = Compose(transforms2)
        self.p = p

    def apply(self, sample, context=None):
        if random.random() < self.p:
            return self.transforms1(sample)
        return self.transforms2(sample)


@register_op
class RandomShortSideResize(BaseOperator):
    def __init__(self,
                 short_side_sizes,
                 max_size=None,
                 interp=cv2.INTER_LINEAR,
                 random_interp=False):
        """
        Resize the image randomly according to the short side. If max_size is not None,
        the long side is scaled according to max_size. The whole process will be keep ratio.
        Args:
            short_side_sizes (list|tuple): Image target short side size.
            max_size (int): The size of the longest side of image after resize.
            interp (int): The interpolation method.
            random_interp (bool): Whether random select interpolation method.
        """
        super(RandomShortSideResize, self).__init__()

        assert isinstance(short_side_sizes,
                          Sequence), "short_side_sizes must be List or Tuple"

        self.short_side_sizes = short_side_sizes
        self.max_size = max_size
        self.interp = interp
        self.random_interp = random_interp
        self.interps = [
            cv2.INTER_NEAREST,
            cv2.INTER_LINEAR,
            cv2.INTER_AREA,
            cv2.INTER_CUBIC,
            cv2.INTER_LANCZOS4,
        ]

    def get_size_with_aspect_ratio(self, image_shape, size, max_size=None):
        h, w = image_shape
        if max_size is not None:
            min_original_size = float(min((w, h)))
            max_original_size = float(max((w, h)))
            if max_original_size / min_original_size * size > max_size:
                size = int(
                    round(max_size * min_original_size / max_original_size))

        if (w <= h and w == size) or (h <= w and h == size):
            return (w, h)

        if w < h:
            ow = size
            oh = int(size * h / w)
        else:
            oh = size
            ow = int(size * w / h)

        return (ow, oh)

    def resize(self,
               sample,
               target_size,
               max_size=None,
               interp=cv2.INTER_LINEAR):
        im = sample['image']
        if not isinstance(im, np.ndarray):
            raise TypeError("{}: image type is not numpy.".format(self))
        if len(im.shape) != 3:
            raise ImageError('{}: image is not 3-dimensional.'.format(self))

        target_size = self.get_size_with_aspect_ratio(im.shape[:2], target_size,
                                                      max_size)
        im_scale_y, im_scale_x = target_size[1] / im.shape[0], target_size[
            0] / im.shape[1]

        sample['image'] = cv2.resize(im, target_size, interpolation=interp)
        sample['im_shape'] = np.asarray(target_size[::-1], dtype=np.float32)
        if 'scale_factor' in sample:
            scale_factor = sample['scale_factor']
            sample['scale_factor'] = np.asarray(
                [scale_factor[0] * im_scale_y, scale_factor[1] * im_scale_x],
                dtype=np.float32)
        else:
            sample['scale_factor'] = np.asarray(
                [im_scale_y, im_scale_x], dtype=np.float32)

        # apply bbox
        if 'gt_bbox' in sample and len(sample['gt_bbox']) > 0:
            sample['gt_bbox'] = self.apply_bbox(
                sample['gt_bbox'], [im_scale_x, im_scale_y], target_size)
        # apply polygon
        if 'gt_poly' in sample and len(sample['gt_poly']) > 0:
            sample['gt_poly'] = self.apply_segm(sample['gt_poly'], im.shape[:2],
                                                [im_scale_x, im_scale_y])
        # apply semantic
        if 'semantic' in sample and sample['semantic']:
            semantic = sample['semantic']
            semantic = cv2.resize(
                semantic.astype('float32'),
                target_size,
                interpolation=self.interp)
            semantic = np.asarray(semantic).astype('int32')
            semantic = np.expand_dims(semantic, 0)
            sample['semantic'] = semantic
        # apply gt_segm
        if 'gt_segm' in sample and len(sample['gt_segm']) > 0:
            masks = [
                cv2.resize(
                    gt_segm, target_size, interpolation=cv2.INTER_NEAREST)
                for gt_segm in sample['gt_segm']
            ]
            sample['gt_segm'] = np.asarray(masks).astype(np.uint8)
        return sample

    def apply_bbox(self, bbox, scale, size):
        im_scale_x, im_scale_y = scale
        resize_w, resize_h = size
        bbox[:, 0::2] *= im_scale_x
        bbox[:, 1::2] *= im_scale_y
        bbox[:, 0::2] = np.clip(bbox[:, 0::2], 0, resize_w)
        bbox[:, 1::2] = np.clip(bbox[:, 1::2], 0, resize_h)
        return bbox.astype('float32')

    def apply_segm(self, segms, im_size, scale):
        def _resize_poly(poly, im_scale_x, im_scale_y):
            resized_poly = np.array(poly).astype('float32')
            resized_poly[0::2] *= im_scale_x
            resized_poly[1::2] *= im_scale_y
            return resized_poly.tolist()

        def _resize_rle(rle, im_h, im_w, im_scale_x, im_scale_y):
            if 'counts' in rle and type(rle['counts']) == list:
                rle = mask_util.frPyObjects(rle, im_h, im_w)

            mask = mask_util.decode(rle)
            mask = cv2.resize(
                mask,
                None,
                None,
                fx=im_scale_x,
                fy=im_scale_y,
                interpolation=self.interp)
            rle = mask_util.encode(np.array(mask, order='F', dtype=np.uint8))
            return rle

        im_h, im_w = im_size
        im_scale_x, im_scale_y = scale
        resized_segms = []
        for segm in segms:
            if is_poly(segm):
                # Polygon format
                resized_segms.append([
                    _resize_poly(poly, im_scale_x, im_scale_y) for poly in segm
                ])
            else:
                # RLE format
                import pycocotools.mask as mask_util
                resized_segms.append(
                    _resize_rle(segm, im_h, im_w, im_scale_x, im_scale_y))

        return resized_segms

    def apply(self, sample, context=None):
        target_size = random.choice(self.short_side_sizes)
        interp = random.choice(
            self.interps) if self.random_interp else self.interp

        return self.resize(sample, target_size, self.max_size, interp)


@register_op
class RandomSizeCrop(BaseOperator):
    """
    Cut the image randomly according to `min_size` and `max_size`
    """

    def __init__(self, min_size, max_size):
        super(RandomSizeCrop, self).__init__()
        self.min_size = min_size
        self.max_size = max_size

        from paddle.vision.transforms.functional import crop as paddle_crop
        self.paddle_crop = paddle_crop

    @staticmethod
    def get_crop_params(img_shape, output_size):
        """Get parameters for ``crop`` for a random crop.
        Args:
            img_shape (list|tuple): Image's height and width.
            output_size (list|tuple): Expected output size of the crop.
        Returns:
            tuple: params (i, j, h, w) to be passed to ``crop`` for random crop.
        """
        h, w = img_shape
        th, tw = output_size

        if h + 1 < th or w + 1 < tw:
            raise ValueError(
                "Required crop size {} is larger then input image size {}".
                format((th, tw), (h, w)))

        if w == tw and h == th:
            return 0, 0, h, w

        i = random.randint(0, h - th + 1)
        j = random.randint(0, w - tw + 1)
        return i, j, th, tw

    def crop(self, sample, region):
        image_shape = sample['image'].shape[:2]
        sample['image'] = self.paddle_crop(sample['image'], *region)

        keep_index = None
        # apply bbox
        if 'gt_bbox' in sample and len(sample['gt_bbox']) > 0:
            sample['gt_bbox'] = self.apply_bbox(sample['gt_bbox'], region)
            bbox = sample['gt_bbox'].reshape([-1, 2, 2])
            area = (bbox[:, 1, :] - bbox[:, 0, :]).prod(axis=1)
            keep_index = np.where(area > 0)[0]
            sample['gt_bbox'] = sample['gt_bbox'][keep_index] if len(
                keep_index) > 0 else np.zeros(
                    [0, 4], dtype=np.float32)
            sample['gt_class'] = sample['gt_class'][keep_index] if len(
                keep_index) > 0 else np.zeros(
                    [0, 1], dtype=np.float32)
            if 'gt_score' in sample:
                sample['gt_score'] = sample['gt_score'][keep_index] if len(
                    keep_index) > 0 else np.zeros(
                        [0, 1], dtype=np.float32)
            if 'is_crowd' in sample:
                sample['is_crowd'] = sample['is_crowd'][keep_index] if len(
                    keep_index) > 0 else np.zeros(
                        [0, 1], dtype=np.float32)

        # apply polygon
        if 'gt_poly' in sample and len(sample['gt_poly']) > 0:
            sample['gt_poly'] = self.apply_segm(sample['gt_poly'], region,
                                                image_shape)
            if keep_index is not None:
                sample['gt_poly'] = sample['gt_poly'][keep_index]
        # apply gt_segm
        if 'gt_segm' in sample and len(sample['gt_segm']) > 0:
            i, j, h, w = region
            sample['gt_segm'] = sample['gt_segm'][:, i:i + h, j:j + w]
            if keep_index is not None:
                sample['gt_segm'] = sample['gt_segm'][keep_index]

        return sample

    def apply_bbox(self, bbox, region):
        i, j, h, w = region
        region_size = np.asarray([w, h])
        crop_bbox = bbox - np.asarray([j, i, j, i])
        crop_bbox = np.minimum(crop_bbox.reshape([-1, 2, 2]), region_size)
        crop_bbox = crop_bbox.clip(min=0)
        return crop_bbox.reshape([-1, 4]).astype('float32')

    def apply_segm(self, segms, region, image_shape):
        def _crop_poly(segm, crop):
            xmin, ymin, xmax, ymax = crop
            crop_coord = [xmin, ymin, xmin, ymax, xmax, ymax, xmax, ymin]
            crop_p = np.array(crop_coord).reshape(4, 2)
            crop_p = Polygon(crop_p)

            crop_segm = list()
            for poly in segm:
                poly = np.array(poly).reshape(len(poly) // 2, 2)
                polygon = Polygon(poly)
                if not polygon.is_valid:
                    exterior = polygon.exterior
                    multi_lines = exterior.intersection(exterior)
                    polygons = shapely.ops.polygonize(multi_lines)
                    polygon = MultiPolygon(polygons)
                multi_polygon = list()
                if isinstance(polygon, MultiPolygon):
                    multi_polygon = copy.deepcopy(polygon)
                else:
                    multi_polygon.append(copy.deepcopy(polygon))
                for per_polygon in multi_polygon:
                    inter = per_polygon.intersection(crop_p)
                    if not inter:
                        continue
                    if isinstance(inter, (MultiPolygon, GeometryCollection)):
                        for part in inter:
                            if not isinstance(part, Polygon):
                                continue
                            part = np.squeeze(
                                np.array(part.exterior.coords[:-1]).reshape(1,
                                                                            -1))
                            part[0::2] -= xmin
                            part[1::2] -= ymin
                            crop_segm.append(part.tolist())
                    elif isinstance(inter, Polygon):
                        crop_poly = np.squeeze(
                            np.array(inter.exterior.coords[:-1]).reshape(1, -1))
                        crop_poly[0::2] -= xmin
                        crop_poly[1::2] -= ymin
                        crop_segm.append(crop_poly.tolist())
                    else:
                        continue
            return crop_segm

        def _crop_rle(rle, crop, height, width):
            if 'counts' in rle and type(rle['counts']) == list:
                rle = mask_util.frPyObjects(rle, height, width)
            mask = mask_util.decode(rle)
            mask = mask[crop[1]:crop[3], crop[0]:crop[2]]
            rle = mask_util.encode(np.array(mask, order='F', dtype=np.uint8))
            return rle

        i, j, h, w = region
        crop = [j, i, j + w, i + h]
        height, width = image_shape
        crop_segms = []
        for segm in segms:
            if is_poly(segm):
                import copy
                import shapely.ops
                from shapely.geometry import Polygon, MultiPolygon, GeometryCollection
                # Polygon format
                crop_segms.append(_crop_poly(segm, crop))
            else:
                # RLE format
                import pycocotools.mask as mask_util
                crop_segms.append(_crop_rle(segm, crop, height, width))
        return crop_segms

    def apply(self, sample, context=None):
        h = random.randint(self.min_size,
                           min(sample['image'].shape[0], self.max_size))
        w = random.randint(self.min_size,
                           min(sample['image'].shape[1], self.max_size))

        region = self.get_crop_params(sample['image'].shape[:2], [h, w])
        return self.crop(sample, region)
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@register_op
class WarpAffine(BaseOperator):
    def __init__(self,
                 keep_res=False,
                 pad=31,
                 input_h=512,
                 input_w=512,
                 scale=0.4,
                 shift=0.1):
        """WarpAffine
        Warp affine the image
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        The code is based on https://github.com/xingyizhou/CenterNet/blob/master/src/lib/datasets/sample/ctdet.py


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        """
        super(WarpAffine, self).__init__()
        self.keep_res = keep_res
        self.pad = pad
        self.input_h = input_h
        self.input_w = input_w
        self.scale = scale
        self.shift = shift

    def apply(self, sample, context=None):
        img = sample['image']
        img = cv2.cvtColor(img, cv2.COLOR_RGB2BGR)
        if 'gt_bbox' in sample and len(sample['gt_bbox']) == 0:
            return sample

        h, w = img.shape[:2]

        if self.keep_res:
            input_h = (h | self.pad) + 1
            input_w = (w | self.pad) + 1
            s = np.array([input_w, input_h], dtype=np.float32)
            c = np.array([w // 2, h // 2], dtype=np.float32)

        else:
            s = max(h, w) * 1.0
            input_h, input_w = self.input_h, self.input_w
            c = np.array([w / 2., h / 2.], dtype=np.float32)

        trans_input = get_affine_transform(c, s, 0, [input_w, input_h])
        img = cv2.resize(img, (w, h))
        inp = cv2.warpAffine(
            img, trans_input, (input_w, input_h), flags=cv2.INTER_LINEAR)
        sample['image'] = inp
        return sample


@register_op
class FlipWarpAffine(BaseOperator):
    def __init__(self,
                 keep_res=False,
                 pad=31,
                 input_h=512,
                 input_w=512,
                 not_rand_crop=False,
                 scale=0.4,
                 shift=0.1,
                 flip=0.5,
                 is_scale=True,
                 use_random=True):
        """FlipWarpAffine
        1. Random Crop
        2. Flip the image horizontal
        3. Warp affine the image 
        """
        super(FlipWarpAffine, self).__init__()
        self.keep_res = keep_res
        self.pad = pad
        self.input_h = input_h
        self.input_w = input_w
        self.not_rand_crop = not_rand_crop
        self.scale = scale
        self.shift = shift
        self.flip = flip
        self.is_scale = is_scale
        self.use_random = use_random

    def apply(self, sample, context=None):
        img = sample['image']
        img = cv2.cvtColor(img, cv2.COLOR_RGB2BGR)
        if 'gt_bbox' in sample and len(sample['gt_bbox']) == 0:
            return sample

        h, w = img.shape[:2]

        if self.keep_res:
            input_h = (h | self.pad) + 1
            input_w = (w | self.pad) + 1
            s = np.array([input_w, input_h], dtype=np.float32)
            c = np.array([w // 2, h // 2], dtype=np.float32)

        else:
            s = max(h, w) * 1.0
            input_h, input_w = self.input_h, self.input_w
            c = np.array([w / 2., h / 2.], dtype=np.float32)

        if self.use_random:
            gt_bbox = sample['gt_bbox']
            if not self.not_rand_crop:
                s = s * np.random.choice(np.arange(0.6, 1.4, 0.1))
                w_border = get_border(128, w)
                h_border = get_border(128, h)
                c[0] = np.random.randint(low=w_border, high=w - w_border)
                c[1] = np.random.randint(low=h_border, high=h - h_border)
            else:
                sf = self.scale
                cf = self.shift
                c[0] += s * np.clip(np.random.randn() * cf, -2 * cf, 2 * cf)
                c[1] += s * np.clip(np.random.randn() * cf, -2 * cf, 2 * cf)
                s = s * np.clip(np.random.randn() * sf + 1, 1 - sf, 1 + sf)

            if np.random.random() < self.flip:
                img = img[:, ::-1, :]
                c[0] = w - c[0] - 1
                oldx1 = gt_bbox[:, 0].copy()
                oldx2 = gt_bbox[:, 2].copy()
                gt_bbox[:, 0] = w - oldx2 - 1
                gt_bbox[:, 2] = w - oldx1 - 1
            sample['gt_bbox'] = gt_bbox

        trans_input = get_affine_transform(c, s, 0, [input_w, input_h])
        if not self.use_random:
            img = cv2.resize(img, (w, h))
        inp = cv2.warpAffine(
            img, trans_input, (input_w, input_h), flags=cv2.INTER_LINEAR)
        if self.is_scale:
            inp = (inp.astype(np.float32) / 255.)
        sample['image'] = inp
        sample['center'] = c
        sample['scale'] = s
        return sample


@register_op
class CenterRandColor(BaseOperator):
    """Random color for CenterNet series models.
    Args:
        saturation (float): saturation settings.
        contrast (float): contrast settings.
        brightness (float): brightness settings.
    """

    def __init__(self, saturation=0.4, contrast=0.4, brightness=0.4):
        super(CenterRandColor, self).__init__()
        self.saturation = saturation
        self.contrast = contrast
        self.brightness = brightness

    def apply_saturation(self, img, img_gray):
        alpha = 1. + np.random.uniform(
            low=-self.saturation, high=self.saturation)
        self._blend(alpha, img, img_gray[:, :, None])
        return img

    def apply_contrast(self, img, img_gray):
        alpha = 1. + np.random.uniform(low=-self.contrast, high=self.contrast)
        img_mean = img_gray.mean()
        self._blend(alpha, img, img_mean)
        return img

    def apply_brightness(self, img, img_gray):
        alpha = 1 + np.random.uniform(
            low=-self.brightness, high=self.brightness)
        img *= alpha
        return img

    def _blend(self, alpha, img, img_mean):
        img *= alpha
        img_mean *= (1 - alpha)
        img += img_mean

    def __call__(self, sample, context=None):
        img = sample['image']
        img_gray = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
        functions = [
            self.apply_brightness,
            self.apply_contrast,
            self.apply_saturation,
        ]
        distortions = np.random.permutation(functions)
        for func in distortions:
            img = func(img, img_gray)
        sample['image'] = img
        return sample
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@register_op
class Mosaic(BaseOperator):
    """ Mosaic operator for image and gt_bboxes
    The code is based on https://github.com/Megvii-BaseDetection/YOLOX/blob/main/yolox/data/datasets/mosaicdetection.py

    1. get mosaic coords
    2. clip bbox and get mosaic_labels
    3. random_affine augment
    4. Mixup augment as copypaste (optinal), not used in tiny/nano

    Args:
        prob (float): probability of using Mosaic, 1.0 as default
        input_dim (list[int]): input shape
        degrees (list[2]): the rotate range to apply, transform range is [min, max]
        translate (list[2]): the translate range to apply, transform range is [min, max]
        scale (list[2]): the scale range to apply, transform range is [min, max]
        shear (list[2]): the shear range to apply, transform range is [min, max]
        enable_mixup (bool): whether to enable Mixup or not
        mixup_prob (float): probability of using Mixup, 1.0 as default
        mixup_scale (list[int]): scale range of Mixup
        remove_outside_box (bool): whether remove outside boxes, False as
            default in COCO dataset, True in MOT dataset
    """

    def __init__(self,
                 prob=1.0,
                 input_dim=[640, 640],
                 degrees=[-10, 10],
                 translate=[-0.1, 0.1],
                 scale=[0.1, 2],
                 shear=[-2, 2],
                 enable_mixup=True,
                 mixup_prob=1.0,
                 mixup_scale=[0.5, 1.5],
                 remove_outside_box=False):
        super(Mosaic, self).__init__()
        self.prob = prob
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        if isinstance(input_dim, Integral):
            input_dim = [input_dim, input_dim]
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        self.input_dim = input_dim
        self.degrees = degrees
        self.translate = translate
        self.scale = scale
        self.shear = shear
        self.enable_mixup = enable_mixup
        self.mixup_prob = mixup_prob
        self.mixup_scale = mixup_scale
        self.remove_outside_box = remove_outside_box

    def get_mosaic_coords(self, mosaic_idx, xc, yc, w, h, input_h, input_w):
        # (x1, y1, x2, y2) means coords in large image,
        # small_coords means coords in small image in mosaic aug.
        if mosaic_idx == 0:
            # top left
            x1, y1, x2, y2 = max(xc - w, 0), max(yc - h, 0), xc, yc
            small_coords = w - (x2 - x1), h - (y2 - y1), w, h
        elif mosaic_idx == 1:
            # top right
            x1, y1, x2, y2 = xc, max(yc - h, 0), min(xc + w, input_w * 2), yc
            small_coords = 0, h - (y2 - y1), min(w, x2 - x1), h
        elif mosaic_idx == 2:
            # bottom left
            x1, y1, x2, y2 = max(xc - w, 0), yc, xc, min(input_h * 2, yc + h)
            small_coords = w - (x2 - x1), 0, w, min(y2 - y1, h)
        elif mosaic_idx == 3:
            # bottom right
            x1, y1, x2, y2 = xc, yc, min(xc + w, input_w * 2), min(input_h * 2,
                                                                   yc + h)
            small_coords = 0, 0, min(w, x2 - x1), min(y2 - y1, h)

        return (x1, y1, x2, y2), small_coords

    def random_affine_augment(self,
                              img,
                              labels=[],
                              input_dim=[640, 640],
                              degrees=[-10, 10],
                              scales=[0.1, 2],
                              shears=[-2, 2],
                              translates=[-0.1, 0.1]):
        # random rotation and scale
        degree = random.uniform(degrees[0], degrees[1])
        scale = random.uniform(scales[0], scales[1])
        assert scale > 0, "Argument scale should be positive."
        R = cv2.getRotationMatrix2D(angle=degree, center=(0, 0), scale=scale)
        M = np.ones([2, 3])

        # random shear
        shear = random.uniform(shears[0], shears[1])
        shear_x = math.tan(shear * math.pi / 180)
        shear_y = math.tan(shear * math.pi / 180)
        M[0] = R[0] + shear_y * R[1]
        M[1] = R[1] + shear_x * R[0]

        # random translation
        translate = random.uniform(translates[0], translates[1])
        translation_x = translate * input_dim[0]
        translation_y = translate * input_dim[1]
        M[0, 2] = translation_x
        M[1, 2] = translation_y

        # warpAffine
        img = cv2.warpAffine(
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            img, M, dsize=tuple(input_dim), borderValue=(114, 114, 114))
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        num_gts = len(labels)
        if num_gts > 0:
            # warp corner points
            corner_points = np.ones((4 * num_gts, 3))
            corner_points[:, :2] = labels[:, [0, 1, 2, 3, 0, 3, 2, 1]].reshape(
                4 * num_gts, 2)  # x1y1, x2y2, x1y2, x2y1
            # apply affine transform
            corner_points = corner_points @M.T
            corner_points = corner_points.reshape(num_gts, 8)

            # create new boxes
            corner_xs = corner_points[:, 0::2]
            corner_ys = corner_points[:, 1::2]
            new_bboxes = np.concatenate((corner_xs.min(1), corner_ys.min(1),
                                         corner_xs.max(1), corner_ys.max(1)))
            new_bboxes = new_bboxes.reshape(4, num_gts).T

            # clip boxes
            new_bboxes[:, 0::2] = np.clip(new_bboxes[:, 0::2], 0, input_dim[0])
            new_bboxes[:, 1::2] = np.clip(new_bboxes[:, 1::2], 0, input_dim[1])
            labels[:, :4] = new_bboxes

        return img, labels

    def __call__(self, sample, context=None):
        if not isinstance(sample, Sequence):
            return sample

        assert len(
            sample) == 5, "Mosaic needs 5 samples, 4 for mosaic and 1 for mixup."
        if np.random.uniform(0., 1.) > self.prob:
            return sample[0]

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        mosaic_gt_bbox, mosaic_gt_class, mosaic_is_crowd, mosaic_difficult = [], [], [], []
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        input_h, input_w = self.input_dim
        yc = int(random.uniform(0.5 * input_h, 1.5 * input_h))
        xc = int(random.uniform(0.5 * input_w, 1.5 * input_w))
        mosaic_img = np.full((input_h * 2, input_w * 2, 3), 114, dtype=np.uint8)

        # 1. get mosaic coords
        for mosaic_idx, sp in enumerate(sample[:4]):
            img = sp['image']
            gt_bbox = sp['gt_bbox']
            h0, w0 = img.shape[:2]
            scale = min(1. * input_h / h0, 1. * input_w / w0)
            img = cv2.resize(
                img, (int(w0 * scale), int(h0 * scale)),
                interpolation=cv2.INTER_LINEAR)
            (h, w, c) = img.shape[:3]

            # suffix l means large image, while s means small image in mosaic aug.
            (l_x1, l_y1, l_x2, l_y2), (
                s_x1, s_y1, s_x2, s_y2) = self.get_mosaic_coords(
                    mosaic_idx, xc, yc, w, h, input_h, input_w)

            mosaic_img[l_y1:l_y2, l_x1:l_x2] = img[s_y1:s_y2, s_x1:s_x2]
            padw, padh = l_x1 - s_x1, l_y1 - s_y1

            # Normalized xywh to pixel xyxy format
            _gt_bbox = gt_bbox.copy()
            if len(gt_bbox) > 0:
                _gt_bbox[:, 0] = scale * gt_bbox[:, 0] + padw
                _gt_bbox[:, 1] = scale * gt_bbox[:, 1] + padh
                _gt_bbox[:, 2] = scale * gt_bbox[:, 2] + padw
                _gt_bbox[:, 3] = scale * gt_bbox[:, 3] + padh

            mosaic_gt_bbox.append(_gt_bbox)
            mosaic_gt_class.append(sp['gt_class'])
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            if 'is_crowd' in sp:
                mosaic_is_crowd.append(sp['is_crowd'])
            if 'difficult' in sp:
                mosaic_difficult.append(sp['difficult'])
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        # 2. clip bbox and get mosaic_labels([gt_bbox, gt_class, is_crowd])
        if len(mosaic_gt_bbox):
            mosaic_gt_bbox = np.concatenate(mosaic_gt_bbox, 0)
            mosaic_gt_class = np.concatenate(mosaic_gt_class, 0)
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            if mosaic_is_crowd:
                mosaic_is_crowd = np.concatenate(mosaic_is_crowd, 0)
                mosaic_labels = np.concatenate([
                    mosaic_gt_bbox,
                    mosaic_gt_class.astype(mosaic_gt_bbox.dtype),
                    mosaic_is_crowd.astype(mosaic_gt_bbox.dtype)
                ], 1)
            elif mosaic_difficult:
                mosaic_difficult = np.concatenate(mosaic_difficult, 0)
                mosaic_labels = np.concatenate([
                    mosaic_gt_bbox,
                    mosaic_gt_class.astype(mosaic_gt_bbox.dtype),
                    mosaic_difficult.astype(mosaic_gt_bbox.dtype)
                ], 1)
            else:
                mosaic_labels = np.concatenate([
                    mosaic_gt_bbox, mosaic_gt_class.astype(mosaic_gt_bbox.dtype)
                ], 1)
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            if self.remove_outside_box:
                # for MOT dataset
                flag1 = mosaic_gt_bbox[:, 0] < 2 * input_w
                flag2 = mosaic_gt_bbox[:, 2] > 0
                flag3 = mosaic_gt_bbox[:, 1] < 2 * input_h
                flag4 = mosaic_gt_bbox[:, 3] > 0
                flag_all = flag1 * flag2 * flag3 * flag4
                mosaic_labels = mosaic_labels[flag_all]
            else:
                mosaic_labels[:, 0] = np.clip(mosaic_labels[:, 0], 0,
                                              2 * input_w)
                mosaic_labels[:, 1] = np.clip(mosaic_labels[:, 1], 0,
                                              2 * input_h)
                mosaic_labels[:, 2] = np.clip(mosaic_labels[:, 2], 0,
                                              2 * input_w)
                mosaic_labels[:, 3] = np.clip(mosaic_labels[:, 3], 0,
                                              2 * input_h)
        else:
            mosaic_labels = np.zeros((1, 6))

        # 3. random_affine augment
        mosaic_img, mosaic_labels = self.random_affine_augment(
            mosaic_img,
            mosaic_labels,
            input_dim=self.input_dim,
            degrees=self.degrees,
            translates=self.translate,
            scales=self.scale,
            shears=self.shear)

        # 4. Mixup augment as copypaste, https://arxiv.org/abs/2012.07177
        # optinal, not used(enable_mixup=False) in tiny/nano
        if (self.enable_mixup and not len(mosaic_labels) == 0 and
                random.random() < self.mixup_prob):
            sample_mixup = sample[4]
            mixup_img = sample_mixup['image']
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            if 'is_crowd' in sample_mixup:
                cp_labels = np.concatenate([
                    sample_mixup['gt_bbox'],
                    sample_mixup['gt_class'].astype(mosaic_labels.dtype),
                    sample_mixup['is_crowd'].astype(mosaic_labels.dtype)
                ], 1)
            elif 'difficult' in sample_mixup:
                cp_labels = np.concatenate([
                    sample_mixup['gt_bbox'],
                    sample_mixup['gt_class'].astype(mosaic_labels.dtype),
                    sample_mixup['difficult'].astype(mosaic_labels.dtype)
                ], 1)
            else:
                cp_labels = np.concatenate([
                    sample_mixup['gt_bbox'],
                    sample_mixup['gt_class'].astype(mosaic_labels.dtype)
                ], 1)
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            mosaic_img, mosaic_labels = self.mixup_augment(
                mosaic_img, mosaic_labels, self.input_dim, cp_labels, mixup_img)

        sample0 = sample[0]
        sample0['image'] = mosaic_img.astype(np.uint8)  # can not be float32
        sample0['h'] = float(mosaic_img.shape[0])
        sample0['w'] = float(mosaic_img.shape[1])
        sample0['im_shape'][0] = sample0['h']
        sample0['im_shape'][1] = sample0['w']
        sample0['gt_bbox'] = mosaic_labels[:, :4].astype(np.float32)
        sample0['gt_class'] = mosaic_labels[:, 4:5].astype(np.float32)
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        if 'is_crowd' in sample[0]:
            sample0['is_crowd'] = mosaic_labels[:, 5:6].astype(np.float32)
        if 'difficult' in sample[0]:
            sample0['difficult'] = mosaic_labels[:, 5:6].astype(np.float32)
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        return sample0

    def mixup_augment(self, origin_img, origin_labels, input_dim, cp_labels,
                      img):
        jit_factor = random.uniform(*self.mixup_scale)
        FLIP = random.uniform(0, 1) > 0.5
        if len(img.shape) == 3:
            cp_img = np.ones(
                (input_dim[0], input_dim[1], 3), dtype=np.uint8) * 114
        else:
            cp_img = np.ones(input_dim, dtype=np.uint8) * 114

        cp_scale_ratio = min(input_dim[0] / img.shape[0],
                             input_dim[1] / img.shape[1])
        resized_img = cv2.resize(
            img, (int(img.shape[1] * cp_scale_ratio),
                  int(img.shape[0] * cp_scale_ratio)),
            interpolation=cv2.INTER_LINEAR)

        cp_img[:int(img.shape[0] * cp_scale_ratio), :int(img.shape[
            1] * cp_scale_ratio)] = resized_img

        cp_img = cv2.resize(cp_img, (int(cp_img.shape[1] * jit_factor),
                                     int(cp_img.shape[0] * jit_factor)))
        cp_scale_ratio *= jit_factor

        if FLIP:
            cp_img = cp_img[:, ::-1, :]

        origin_h, origin_w = cp_img.shape[:2]
        target_h, target_w = origin_img.shape[:2]
        padded_img = np.zeros(
            (max(origin_h, target_h), max(origin_w, target_w), 3),
            dtype=np.uint8)
        padded_img[:origin_h, :origin_w] = cp_img

        x_offset, y_offset = 0, 0
        if padded_img.shape[0] > target_h:
            y_offset = random.randint(0, padded_img.shape[0] - target_h - 1)
        if padded_img.shape[1] > target_w:
            x_offset = random.randint(0, padded_img.shape[1] - target_w - 1)
        padded_cropped_img = padded_img[y_offset:y_offset + target_h, x_offset:
                                        x_offset + target_w]

        # adjust boxes
        cp_bboxes_origin_np = cp_labels[:, :4].copy()
        cp_bboxes_origin_np[:, 0::2] = np.clip(cp_bboxes_origin_np[:, 0::2] *
                                               cp_scale_ratio, 0, origin_w)
        cp_bboxes_origin_np[:, 1::2] = np.clip(cp_bboxes_origin_np[:, 1::2] *
                                               cp_scale_ratio, 0, origin_h)

        if FLIP:
            cp_bboxes_origin_np[:, 0::2] = (
                origin_w - cp_bboxes_origin_np[:, 0::2][:, ::-1])
        cp_bboxes_transformed_np = cp_bboxes_origin_np.copy()
        if self.remove_outside_box:
            # for MOT dataset
            cp_bboxes_transformed_np[:, 0::2] -= x_offset
            cp_bboxes_transformed_np[:, 1::2] -= y_offset
        else:
            cp_bboxes_transformed_np[:, 0::2] = np.clip(
                cp_bboxes_transformed_np[:, 0::2] - x_offset, 0, target_w)
            cp_bboxes_transformed_np[:, 1::2] = np.clip(
                cp_bboxes_transformed_np[:, 1::2] - y_offset, 0, target_h)

        cls_labels = cp_labels[:, 4:5].copy()
        box_labels = cp_bboxes_transformed_np
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        if cp_labels.shape[-1] == 6:
            crd_labels = cp_labels[:, 5:6].copy()
            labels = np.hstack((box_labels, cls_labels, crd_labels))
        else:
            labels = np.hstack((box_labels, cls_labels))
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        if self.remove_outside_box:
            labels = labels[labels[:, 0] < target_w]
            labels = labels[labels[:, 2] > 0]
            labels = labels[labels[:, 1] < target_h]
            labels = labels[labels[:, 3] > 0]

        origin_labels = np.vstack((origin_labels, labels))
        origin_img = origin_img.astype(np.float32)
        origin_img = 0.5 * origin_img + 0.5 * padded_cropped_img.astype(
            np.float32)

        return origin_img.astype(np.uint8), origin_labels


@register_op
class PadResize(BaseOperator):
    """ PadResize for image and gt_bbbox

    Args:
        target_size (list[int]): input shape
        fill_value (float): pixel value of padded image
    """

    def __init__(self, target_size, fill_value=114):
        super(PadResize, self).__init__()
        if isinstance(target_size, Integral):
            target_size = [target_size, target_size]
        self.target_size = target_size
        self.fill_value = fill_value

    def _resize(self, img, bboxes, labels):
        ratio = min(self.target_size[0] / img.shape[0],
                    self.target_size[1] / img.shape[1])
        w, h = int(img.shape[1] * ratio), int(img.shape[0] * ratio)
        resized_img = cv2.resize(img, (w, h), interpolation=cv2.INTER_LINEAR)

        if len(bboxes) > 0:
            bboxes *= ratio
            mask = np.minimum(bboxes[:, 2] - bboxes[:, 0],
                              bboxes[:, 3] - bboxes[:, 1]) > 1
            bboxes = bboxes[mask]
            labels = labels[mask]
        return resized_img, bboxes, labels

    def _pad(self, img):
        h, w, _ = img.shape
        if h == self.target_size[0] and w == self.target_size[1]:
            return img
        padded_img = np.full(
            (self.target_size[0], self.target_size[1], 3),
            self.fill_value,
            dtype=np.uint8)
        padded_img[:h, :w] = img
        return padded_img

    def apply(self, sample, context=None):
        image = sample['image']
        bboxes = sample['gt_bbox']
        labels = sample['gt_class']
        image, bboxes, labels = self._resize(image, bboxes, labels)
        sample['image'] = self._pad(image).astype(np.float32)
        sample['gt_bbox'] = bboxes
        sample['gt_class'] = labels
        return sample