infer.py 19.4 KB
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# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved.
#
# 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.

import os
import argparse
import yaml
from PIL import Image
import cv2
import numpy as np
import paddle.fluid as fluid
from visualize import visualize_box_mask


def decode_image(im_file, im_info):
    """read rgb image
    Args:
        im_file (str/np.ndarray): path of image/ np.ndarray read by cv2
        im_info (dict): info of image
    Returns:
        im (np.ndarray):  processed image (np.ndarray)
        im_info (dict): info of processed image
    """
    if isinstance(im_file, str):
        with open(im_file, 'rb') as f:
            im_read = f.read()
        data = np.frombuffer(im_read, dtype='uint8')
        im = cv2.imdecode(data, 1)  # BGR mode, but need RGB mode
        im = cv2.cvtColor(im, cv2.COLOR_BGR2RGB)
        im_info['origin_shape'] = im.shape[:2]
        im_info['resize_shape'] = im.shape[:2]
    else:
        im = im_file
        im_info['origin_shape'] = im.shape[:2]
        im_info['resize_shape'] = im.shape[:2]
    return im, im_info


class Resize(object):
    """resize image by target_size and max_size
    Args:
        arch (str): model type
        target_size (int): the target size of image
        max_size (int): the max size of image
        use_cv2 (bool): whether us cv2
        image_shape (list): input shape of model
        interp (int): method of resize
    """

    def __init__(self,
                 arch,
                 target_size,
                 max_size,
                 use_cv2=True,
                 image_shape=None,
                 interp=cv2.INTER_LINEAR):
        self.target_size = target_size
        self.max_size = max_size
        self.image_shape = image_shape,
        self.arch = arch
        self.use_cv2 = use_cv2
        self.interp = interp
        self.scale_set = {'RCNN', 'RetinaNet'}

    def __call__(self, im, im_info):
        """
        Args:
            im (np.ndarray): image (np.ndarray)
            im_info (dict): info of image
        Returns:
            im (np.ndarray):  processed image (np.ndarray)
            im_info (dict): info of processed image
        """
        im_channel = im.shape[2]
        im_scale_x, im_scale_y = self.generate_scale(im)
        if self.use_cv2:
            im = cv2.resize(
                im,
                None,
                None,
                fx=im_scale_x,
                fy=im_scale_y,
                interpolation=self.interp)
        else:
            resize_w = int(im_scale_x * float(im.shape[1]))
            resize_h = int(im_scale_y * float(im.shape[0]))
            if self.max_size != 0:
                raise TypeError(
                    'If you set max_size to cap the maximum size of image,'
                    'please set use_cv2 to True to resize the image.')
            im = im.astype('uint8')
            im = Image.fromarray(im)
            im = im.resize((int(resize_w), int(resize_h)), self.interp)
            im = np.array(im)

        # padding im when image_shape fixed by infer_cfg.yml
        if self.max_size != 0 and self.image_shape is not None:
            padding_im = np.zeros(
                (self.max_size, self.max_size, im_channel), dtype=np.float32)
            im_h, im_w = im.shape[:2]
            padding_im[:im_h, :im_w, :] = im
            im = padding_im

        if self.arch in self.scale_set:
            im_info['scale'] = im_scale_x
        im_info['resize_shape'] = im.shape[:2]
        return im, im_info

    def generate_scale(self, im):
        """
        Args:
            im (np.ndarray): image (np.ndarray)
        Returns:
            im_scale_x: the resize ratio of X 
            im_scale_y: the resize ratio of Y 
        """
        origin_shape = im.shape[:2]
        im_c = im.shape[2]
        if self.max_size != 0 and self.arch in self.scale_set:
            im_size_min = np.min(origin_shape[0:2])
            im_size_max = np.max(origin_shape[0:2])
            im_scale = float(self.target_size) / float(im_size_min)
            if np.round(im_scale * im_size_max) > self.max_size:
                im_scale = float(self.max_size) / float(im_size_max)
            im_scale_x = im_scale
            im_scale_y = im_scale
        else:
            im_scale_x = float(self.target_size) / float(origin_shape[1])
            im_scale_y = float(self.target_size) / float(origin_shape[0])
        return im_scale_x, im_scale_y


class Normalize(object):
    """normalize image
    Args:
        mean (list): im - mean
        std (list): im / std
        is_scale (bool): whether need im / 255
        is_channel_first (bool): if True: image shape is CHW, else: HWC
    """

    def __init__(self, mean, std, is_scale=True, is_channel_first=False):
        self.mean = mean
        self.std = std
        self.is_scale = is_scale
        self.is_channel_first = is_channel_first

    def __call__(self, im, im_info):
        """
        Args:
            im (np.ndarray): image (np.ndarray)
            im_info (dict): info of image
        Returns:
            im (np.ndarray):  processed image (np.ndarray)
            im_info (dict): info of processed image
        """
        im = im.astype(np.float32, copy=False)
        if self.is_channel_first:
            mean = np.array(self.mean)[:, np.newaxis, np.newaxis]
            std = np.array(self.std)[:, np.newaxis, np.newaxis]
        else:
            mean = np.array(self.mean)[np.newaxis, np.newaxis, :]
            std = np.array(self.std)[np.newaxis, np.newaxis, :]
        if self.is_scale:
            im = im / 255.0
        im -= mean
        im /= std
        return im, im_info


class Permute(object):
    """permute image
    Args:
        to_bgr (bool): whether convert RGB to BGR 
        channel_first (bool): whether convert HWC to CHW
    """

    def __init__(self, to_bgr=False, channel_first=True):
        self.to_bgr = to_bgr
        self.channel_first = channel_first

    def __call__(self, im, im_info):
        """
        Args:
            im (np.ndarray): image (np.ndarray)
            im_info (dict): info of image
        Returns:
            im (np.ndarray):  processed image (np.ndarray)
            im_info (dict): info of processed image
        """
        if self.channel_first:
            im = im.transpose((2, 0, 1)).copy()
        if self.to_bgr:
            im = im[[2, 1, 0], :, :]
        return im, im_info


class PadStride(object):
    """ padding image for model with FPN 
    Args:
        stride (bool): model with FPN need image shape % stride == 0 
    """

    def __init__(self, stride=0):
        self.coarsest_stride = stride

    def __call__(self, im, im_info):
        """
        Args:
            im (np.ndarray): image (np.ndarray)
            im_info (dict): info of image
        Returns:
            im (np.ndarray):  processed image (np.ndarray)
            im_info (dict): info of processed image
        """
        coarsest_stride = self.coarsest_stride
        if coarsest_stride == 0:
            return im
        im_c, im_h, im_w = im.shape
        pad_h = int(np.ceil(float(im_h) / coarsest_stride) * coarsest_stride)
        pad_w = int(np.ceil(float(im_w) / coarsest_stride) * coarsest_stride)
        padding_im = np.zeros((im_c, pad_h, pad_w), dtype=np.float32)
        padding_im[:, :im_h, :im_w] = im
        im_info['resize_shape'] = padding_im.shape[1:]
        return padding_im, im_info


def create_inputs(im, im_info, model_arch='YOLO'):
    """generate input for different model type
    Args:
        im (np.ndarray): image (np.ndarray)
        im_info (dict): info of image
        model_arch (str): model type
    Returns:
        inputs (dict): input of model
    """
    inputs = {}
    inputs['image'] = im
    origin_shape = list(im_info['origin_shape'])
    resize_shape = list(im_info['resize_shape'])
    scale = im_info['scale']
    if 'YOLO' in model_arch:
        im_size = np.array([origin_shape]).astype('int32')
        inputs['im_size'] = im_size
    elif 'RetinaNet' in model_arch:
        im_info = np.array([resize_shape + [scale]]).astype('float32')
        inputs['im_info'] = im_info
    elif 'RCNN' in model_arch:
        im_info = np.array([resize_shape + [scale]]).astype('float32')
        im_shape = np.array([origin_shape + [1.]]).astype('float32')
        inputs['im_info'] = im_info
        inputs['im_shape'] = im_shape
    return inputs


class Config():
    """set config of preprocess, postprocess and visualize
    Args:
        model_dir (str): root path of model.yml
    """
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    support_models = ['YOLO', 'SSD', 'RetinaNet', 'RCNN', 'Face']
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    def __init__(self, model_dir):
        # parsing Yaml config for Preprocess
        deploy_file = os.path.join(model_dir, 'infer_cfg.yml')
        with open(deploy_file) as f:
            yml_conf = yaml.safe_load(f)
        self.check_model(yml_conf)
        self.arch = yml_conf['arch']
        self.preprocess_infos = yml_conf['Preprocess']
        self.use_python_inference = yml_conf['use_python_inference']
        self.run_mode = yml_conf['mode']
        self.min_subgraph_size = yml_conf['min_subgraph_size']
        self.labels = yml_conf['label_list']
        if not yml_conf['with_background']:
            self.labels = self.labels[1:]
        self.mask_resolution = None
        if 'mask_resolution' in yml_conf:
            self.mask_resolution = yml_conf['mask_resolution']

    def check_model(self, yml_conf):
        """
        Raises:
            ValueError: loaded model not in supported model type 
        """
        for support_model in self.support_models:
            if support_model in yml_conf['arch']:
                return True
        raise ValueError(
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            "Unsupported arch: {}, expect SSD, YOLO, RetinaNet, RCNN and Face".
            format(yml_conf['arch']))
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def load_predictor(model_dir,
                   run_mode='fluid',
                   batch_size=1,
                   use_gpu=False,
                   min_subgraph_size=3):
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    """set AnalysisConfig, generate AnalysisPredictor
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    Args:
        model_dir (str): root path of __model__ and __params__
        use_gpu (bool): whether use gpu
    Returns:
        predictor (PaddlePredictor): AnalysisPredictor
    Raises:
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        ValueError: predict by TensorRT need use_gpu == True.
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    """
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    if not use_gpu and not run_mode == 'fluid':
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        raise ValueError(
            "Predict by TensorRT mode: {}, expect use_gpu==True, but use_gpu == {}"
            .format(run_mode, use_gpu))
    precision_map = {
        'trt_int8': fluid.core.AnalysisConfig.Precision.Int8,
        'trt_fp32': fluid.core.AnalysisConfig.Precision.Float32,
        'trt_fp16': fluid.core.AnalysisConfig.Precision.Half
    }
    config = fluid.core.AnalysisConfig(
        os.path.join(model_dir, '__model__'),
        os.path.join(model_dir, '__params__'))
    if use_gpu:
        # initial GPU memory(M), device ID
        config.enable_use_gpu(100, 0)
        # optimize graph and fuse op
        config.switch_ir_optim(True)
    else:
        config.disable_gpu()

    if run_mode in precision_map.keys():
        config.enable_tensorrt_engine(
            workspace_size=1 << 30,
            max_batch_size=batch_size,
            min_subgraph_size=min_subgraph_size,
            precision_mode=precision_map[run_mode],
            use_static=False,
            use_calib_mode=run_mode == 'trt_int8')

    # disable print log when predict
    config.disable_glog_info()
    # enable shared memory
    config.enable_memory_optim()
    # disable feed, fetch OP,needed by zero_copy_run
    config.switch_use_feed_fetch_ops(False)
    predictor = fluid.core.create_paddle_predictor(config)
    return predictor


def load_executor(model_dir, use_gpu=False):
    if use_gpu:
        place = fluid.CUDAPlace(0)
    else:
        place = fluid.CPUPlace()
    exe = fluid.Executor(place)
    program, feed_names, fetch_targets = fluid.io.load_inference_model(
        dirname=model_dir,
        executor=exe,
        model_filename='__model__',
        params_filename='__params__')
    return exe, program, fetch_targets


def visualize(image_file,
              results,
              labels,
              mask_resolution=14,
              output_dir='output/'):
    # visualize the predict result
    im = visualize_box_mask(
        image_file, results, labels, mask_resolution=mask_resolution)
    img_name = os.path.split(image_file)[-1]
    if not os.path.exists(output_dir):
        os.makedirs(output_dir)
    out_path = os.path.join(output_dir, img_name)
    im.save(out_path, quality=95)
    print("save result to: " + out_path)


class Detector():
    """
    Args:
        model_dir (str): root path of __model__, __params__ and infer_cfg.yml
        use_gpu (bool): whether use gpu
    """

    def __init__(self, model_dir, use_gpu=False, threshold=0.5):
        self.config = Config(model_dir)
        if self.config.use_python_inference:
            self.executor, self.program, self.fecth_targets = load_executor(
                model_dir, use_gpu=use_gpu)
        else:
            self.predictor = load_predictor(
                model_dir,
                run_mode=self.config.run_mode,
                min_subgraph_size=self.config.min_subgraph_size,
                use_gpu=use_gpu)
        self.preprocess_ops = []
        for op_info in self.config.preprocess_infos:
            op_type = op_info.pop('type')
            if op_type == 'Resize':
                op_info['arch'] = self.config.arch
            self.preprocess_ops.append(eval(op_type)(**op_info))

    def preprocess(self, im):
        # process image by preprocess_ops
        im_info = {
            'scale': 1.,
            'origin_shape': None,
            'resize_shape': None,
        }
        im, im_info = decode_image(im, im_info)
        for operator in self.preprocess_ops:
            im, im_info = operator(im, im_info)
        im = np.array((im, )).astype('float32')
        inputs = create_inputs(im, im_info, self.config.arch)
        return inputs, im_info

    def postprocess(self, np_boxes, np_masks, im_info, threshold=0.5):
        # postprocess output of predictor
        results = {}
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        if self.config.arch in ['SSD', 'Face']:
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            w, h = im_info['origin_shape']
            np_boxes[:, 2] *= h
            np_boxes[:, 3] *= w
            np_boxes[:, 4] *= h
            np_boxes[:, 5] *= w
        expect_boxes = np_boxes[:, 1] > threshold
        np_boxes = np_boxes[expect_boxes, :]
        for box in np_boxes:
            print('class_id:{:d}, confidence:{:.2f},'
                  'left_top:[{:.2f},{:.2f}],'
                  ' right_bottom:[{:.2f},{:.2f}]'.format(
                      int(box[0]), box[1], box[2], box[3], box[4], box[5]))
        results['boxes'] = np_boxes
        if np_masks is not None:
            np_masks = np_masks[expect_boxes, :, :, :]
            results['masks'] = np_masks
        return results

    def predict(self, image, threshold=0.5):
        '''
        Args:
            image (str/np.ndarray): path of image/ np.ndarray read by cv2
            threshold (float): threshold of predicted box' score
        Returns:
            results (dict): include 'boxes': np.ndarray: shape:[N,6], N: number of box,
                            matix element:[class, score, x_min, y_min, x_max, y_max]
                            MaskRCNN's results include 'masks': np.ndarray: 
                            shape:[N, class_num, mask_resolution, mask_resolution]  
        '''
        inputs, im_info = self.preprocess(image)
        np_boxes, np_masks = None, None
        if self.config.use_python_inference:
            outs = self.executor.run(self.program,
                                     feed=inputs,
                                     fetch_list=self.fecth_targets,
                                     return_numpy=False)
            np_boxes = np.array(outs[0])
            if self.config.mask_resolution is not None:
                np_masks = np.arrya(outs[1])
        else:
            input_names = self.predictor.get_input_names()
            for i in range(len(inputs)):
                input_tensor = self.predictor.get_input_tensor(input_names[i])
                input_tensor.copy_from_cpu(inputs[input_names[i]])
            self.predictor.zero_copy_run()
            output_names = self.predictor.get_output_names()
            boxes_tensor = self.predictor.get_output_tensor(output_names[0])
            np_boxes = boxes_tensor.copy_to_cpu()
            if self.config.mask_resolution is not None:
                masks_tensor = self.predictor.get_output_tensor(output_names[1])
                np_masks = masks_tensor.copy_to_cpu()
        results = self.postprocess(
            np_boxes, np_masks, im_info, threshold=threshold)
        return results


def predict_image():
    detector = Detector(FLAGS.model_dir, use_gpu=FLAGS.use_gpu)
    results = detector.predict(FLAGS.image_file, FLAGS.threshold)
    visualize(
        FLAGS.image_file,
        results,
        detector.config.labels,
        mask_resolution=detector.config.mask_resolution,
        output_dir=FLAGS.output_dir)


def predict_video():
    detector = Detector(FLAGS.model_dir, use_gpu=FLAGS.use_gpu)
    capture = cv2.VideoCapture(FLAGS.video_file)
    fps = 30
    width = int(capture.get(cv2.CAP_PROP_FRAME_WIDTH))
    height = int(capture.get(cv2.CAP_PROP_FRAME_HEIGHT))
    fourcc = cv2.VideoWriter_fourcc(*'mp4v')
    video_name = os.path.split(FLAGS.video_file)[-1]
    if not os.path.exists(FLAGS.output_dir):
        os.makedirs(FLAGES.output_dir)
    out_path = os.path.join(FLAGS.output_dir, video_name)
    writer = cv2.VideoWriter(out_path, fourcc, fps, (width, height))
    index = 1
    while (1):
        ret, frame = capture.read()
        if not ret:
            break
        print('detect frame:%d' % (index))
        index += 1
        results = detector.predict(frame, FLAGS.threshold)
        im = visualize_box_mask(
            frame,
            results,
            detector.config.labels,
            mask_resolution=detector.config.mask_resolution)
        im = np.array(im)
        writer.write(im)
    writer.release()


if __name__ == '__main__':
    parser = argparse.ArgumentParser(description=__doc__)
    parser.add_argument(
        "--model_dir",
        type=str,
        default=None,
        help=("Directory include:'__model__', '__params__', "
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              "'infer_cfg.yml', created by tools/export_model.py."),
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        required=True)
    parser.add_argument(
        "--image_file", type=str, default='', help="Path of image file.")
    parser.add_argument(
        "--video_file", type=str, default='', help="Path of video file.")
    parser.add_argument(
        "--use_gpu", default=False, help="Whether to predict with GPU.")
    parser.add_argument(
        "--threshold", type=float, default=0.5, help="Threshold of score.")
    parser.add_argument(
        "--output_dir",
        type=str,
        default="output",
        help="Directory of output visualization files.")

    FLAGS = parser.parse_args()
    if FLAGS.image_file != '' and FLAGS.video_file != '':
        assert "Cannot predict image and video at the same time"
    if FLAGS.image_file != '':
        predict_image()
    if FLAGS.video_file != '':
        predict_video()