# copyright (c) 2020 PaddlePaddle Authors. All Rights Reserve. # # 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. from __future__ import absolute_import import os.path as osp import random import copy import json import cv2 import numpy as np import paddlex.utils.logging as logging from paddlex.utils import path_normalization from .dataset import Dataset from .dataset import get_encoding from .dataset import is_pic class EasyDataSeg(Dataset): """读取EasyDataSeg语义分割任务数据集,并对样本进行相应的处理。 Args: data_dir (str): 数据集所在的目录路径。 file_list (str): 描述数据集图片文件和对应标注文件的文件路径(文本内每行路径为相对data_dir的相对路)。 label_list (str): 描述数据集包含的类别信息文件路径。 transforms (list): 数据集中每个样本的预处理/增强算子。 num_workers (int): 数据集中样本在预处理过程中的线程或进程数。默认为4。 buffer_size (int): 数据集中样本在预处理过程中队列的缓存长度,以样本数为单位。默认为100。 parallel_method (str): 数据集中样本在预处理过程中并行处理的方式,支持'thread' 线程和'process'进程两种方式。默认为'process'(Windows和Mac下会强制使用thread,该参数无效)。 shuffle (bool): 是否需要对数据集中样本打乱顺序。默认为False。 """ def __init__(self, data_dir, file_list, label_list, transforms=None, num_workers='auto', buffer_size=100, parallel_method='process', shuffle=False): super(EasyDataSeg, self).__init__( transforms=transforms, num_workers=num_workers, buffer_size=buffer_size, parallel_method=parallel_method, shuffle=shuffle) self.file_list = list() self.labels = list() self._epoch = 0 from pycocotools.mask import decode cname2cid = {} label_id = 0 with open(label_list, encoding=get_encoding(label_list)) as fr: for line in fr.readlines(): cname2cid[line.strip()] = label_id label_id += 1 self.labels.append(line.strip()) with open(file_list, encoding=get_encoding(file_list)) as f: for line in f: img_file, json_file = [osp.join(data_dir, x) \ for x in line.strip().split()[:2]] img_file = path_normalization(img_file) json_file = path_normalization(json_file) if not is_pic(img_file): continue if not osp.isfile(json_file): continue if not osp.exists(img_file): raise IOError( 'The image file {} is not exist!'.format(img_file)) with open(json_file, mode='r', \ encoding=get_encoding(json_file)) as j: json_info = json.load(j) im = cv2.imread(img_file) im_w = im.shape[1] im_h = im.shape[0] objs = json_info['labels'] lable_npy = np.zeros([im_h, im_w]).astype('uint8') for i, obj in enumerate(objs): cname = obj['name'] cid = cname2cid[cname] mask_dict = {} mask_dict['size'] = [im_h, im_w] mask_dict['counts'] = obj['mask'].encode() mask = decode(mask_dict) mask *= cid conflict_index = np.where(((lable_npy > 0) & (mask == cid)) == True) mask[conflict_index] = 0 lable_npy += mask self.file_list.append([img_file, lable_npy]) self.num_samples = len(self.file_list) logging.info("{} samples in file {}".format( len(self.file_list), file_list)) def iterator(self): self._epoch += 1 self._pos = 0 files = copy.deepcopy(self.file_list) if self.shuffle: random.shuffle(files) files = files[:self.num_samples] self.num_samples = len(files) for f in files: lable_npy = f[1] sample = [f[0], None, lable_npy] yield sample