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- # Copyright (c) 2022 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.
- from __future__ import absolute_import
- import copy
- import os
- import os.path as osp
- import random
- import re
- from collections import OrderedDict
- import xml.etree.ElementTree as ET
- import numpy as np
- from .base import BaseDataset
- from paddlers.utils import logging, get_encoding, path_normalization, is_pic
- from paddlers.transforms import DecodeImg, MixupImage
- from paddlers.tools import YOLOAnchorCluster
- class VOCDetection(BaseDataset):
- """读取PascalVOC格式的检测数据集,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 (paddlers.transforms.Compose): 数据集中每个样本的预处理/增强算子。
- num_workers (int|str): 数据集中样本在预处理过程中的线程或进程数。默认为'auto'。当设为'auto'时,根据
- 系统的实际CPU核数设置`num_workers`: 如果CPU核数的一半大于8,则`num_workers`为8,否则为CPU核数的
- 一半。
- shuffle (bool): 是否需要对数据集中样本打乱顺序。默认为False。
- allow_empty (bool): 是否加载负样本。默认为False。
- empty_ratio (float): 用于指定负样本占总样本数的比例。如果小于0或大于等于1,则保留全部的负样本。默认为1。
- """
- def __init__(self,
- data_dir,
- file_list,
- label_list,
- transforms=None,
- num_workers='auto',
- shuffle=False,
- allow_empty=False,
- empty_ratio=1.):
- # matplotlib.use() must be called *before* pylab, matplotlib.pyplot,
- # or matplotlib.backends is imported for the first time
- # pycocotools import matplotlib
- import matplotlib
- matplotlib.use('Agg')
- from pycocotools.coco import COCO
- super(VOCDetection, self).__init__(data_dir, label_list, transforms,
- num_workers, shuffle)
- self.data_fields = None
- self.num_max_boxes = 50
- self.use_mix = False
- if self.transforms is not None:
- for op in self.transforms.transforms:
- if isinstance(op, MixupImage):
- self.mixup_op = copy.deepcopy(op)
- self.use_mix = True
- self.num_max_boxes *= 2
- break
- self.batch_transforms = None
- self.allow_empty = allow_empty
- self.empty_ratio = empty_ratio
- self.file_list = list()
- neg_file_list = list()
- self.labels = list()
- annotations = dict()
- annotations['images'] = list()
- annotations['categories'] = list()
- annotations['annotations'] = list()
- cname2cid = OrderedDict()
- label_id = 0
- with open(label_list, 'r', encoding=get_encoding(label_list)) as f:
- for line in f.readlines():
- cname2cid[line.strip()] = label_id
- label_id += 1
- self.labels.append(line.strip())
- logging.info("Starting to read file list from dataset...")
- for k, v in cname2cid.items():
- annotations['categories'].append({
- 'supercategory': 'component',
- 'id': v + 1,
- 'name': k
- })
- ct = 0
- ann_ct = 0
- with open(file_list, 'r', encoding=get_encoding(file_list)) as f:
- while True:
- line = f.readline()
- if not line:
- break
- if len(line.strip().split()) > 2:
- raise Exception("A space is defined as the separator, "
- "but it exists in image or label name {}."
- .format(line))
- img_file, xml_file = [
- osp.join(data_dir, x) for x in line.strip().split()[:2]
- ]
- img_file = path_normalization(img_file)
- xml_file = path_normalization(xml_file)
- if not is_pic(img_file):
- continue
- if not osp.isfile(xml_file):
- continue
- if not osp.exists(img_file):
- logging.warning('The image file {} does not exist!'.format(
- img_file))
- continue
- if not osp.exists(xml_file):
- logging.warning('The annotation file {} does not exist!'.
- format(xml_file))
- continue
- tree = ET.parse(xml_file)
- if tree.find('id') is None:
- im_id = np.asarray([ct])
- else:
- ct = int(tree.find('id').text)
- im_id = np.asarray([int(tree.find('id').text)])
- pattern = re.compile('<size>', re.IGNORECASE)
- size_tag = pattern.findall(str(ET.tostringlist(tree.getroot())))
- if len(size_tag) > 0:
- size_tag = size_tag[0][1:-1]
- size_element = tree.find(size_tag)
- pattern = re.compile('<width>', re.IGNORECASE)
- width_tag = pattern.findall(
- str(ET.tostringlist(size_element)))[0][1:-1]
- im_w = float(size_element.find(width_tag).text)
- pattern = re.compile('<height>', re.IGNORECASE)
- height_tag = pattern.findall(
- str(ET.tostringlist(size_element)))[0][1:-1]
- im_h = float(size_element.find(height_tag).text)
- else:
- im_w = 0
- im_h = 0
- pattern = re.compile('<object>', re.IGNORECASE)
- obj_match = pattern.findall(
- str(ET.tostringlist(tree.getroot())))
- if len(obj_match) > 0:
- obj_tag = obj_match[0][1:-1]
- objs = tree.findall(obj_tag)
- else:
- objs = list()
- num_bbox, i = len(objs), 0
- gt_bbox = np.zeros((num_bbox, 4), dtype=np.float32)
- gt_class = np.zeros((num_bbox, 1), dtype=np.int32)
- gt_score = np.zeros((num_bbox, 1), dtype=np.float32)
- is_crowd = np.zeros((num_bbox, 1), dtype=np.int32)
- difficult = np.zeros((num_bbox, 1), dtype=np.int32)
- for obj in objs:
- pattern = re.compile('<name>', re.IGNORECASE)
- name_tag = pattern.findall(str(ET.tostringlist(obj)))[0][1:
- -1]
- cname = obj.find(name_tag).text.strip()
- pattern = re.compile('<difficult>', re.IGNORECASE)
- diff_tag = pattern.findall(str(ET.tostringlist(obj)))
- if len(diff_tag) == 0:
- _difficult = 0
- else:
- diff_tag = diff_tag[0][1:-1]
- try:
- _difficult = int(obj.find(diff_tag).text)
- except Exception:
- _difficult = 0
- pattern = re.compile('<bndbox>', re.IGNORECASE)
- box_tag = pattern.findall(str(ET.tostringlist(obj)))
- if len(box_tag) == 0:
- logging.warning(
- "There's no field '<bndbox>' in one of object, "
- "so this object will be ignored. xml file: {}".
- format(xml_file))
- continue
- box_tag = box_tag[0][1:-1]
- box_element = obj.find(box_tag)
- pattern = re.compile('<xmin>', re.IGNORECASE)
- xmin_tag = pattern.findall(
- str(ET.tostringlist(box_element)))[0][1:-1]
- x1 = float(box_element.find(xmin_tag).text)
- pattern = re.compile('<ymin>', re.IGNORECASE)
- ymin_tag = pattern.findall(
- str(ET.tostringlist(box_element)))[0][1:-1]
- y1 = float(box_element.find(ymin_tag).text)
- pattern = re.compile('<xmax>', re.IGNORECASE)
- xmax_tag = pattern.findall(
- str(ET.tostringlist(box_element)))[0][1:-1]
- x2 = float(box_element.find(xmax_tag).text)
- pattern = re.compile('<ymax>', re.IGNORECASE)
- ymax_tag = pattern.findall(
- str(ET.tostringlist(box_element)))[0][1:-1]
- y2 = float(box_element.find(ymax_tag).text)
- x1 = max(0, x1)
- y1 = max(0, y1)
- if im_w > 0.5 and im_h > 0.5:
- x2 = min(im_w - 1, x2)
- y2 = min(im_h - 1, y2)
- if not (x2 >= x1 and y2 >= y1):
- logging.warning(
- "Bounding box for object {} does not satisfy xmin {} <= xmax {} and ymin {} <= ymax {}, "
- "so this object is skipped. xml file: {}".format(
- i, x1, x2, y1, y2, xml_file))
- continue
- gt_bbox[i, :] = [x1, y1, x2, y2]
- gt_class[i, 0] = cname2cid[cname]
- gt_score[i, 0] = 1.
- is_crowd[i, 0] = 0
- difficult[i, 0] = _difficult
- i += 1
- annotations['annotations'].append({
- 'iscrowd': 0,
- 'image_id': int(im_id[0]),
- 'bbox': [x1, y1, x2 - x1, y2 - y1],
- 'area': float((x2 - x1) * (y2 - y1)),
- 'category_id': cname2cid[cname] + 1,
- 'id': ann_ct,
- 'difficult': _difficult
- })
- ann_ct += 1
- gt_bbox = gt_bbox[:i, :]
- gt_class = gt_class[:i, :]
- gt_score = gt_score[:i, :]
- is_crowd = is_crowd[:i, :]
- difficult = difficult[:i, :]
- im_info = {
- 'im_id': im_id,
- 'image_shape': np.array(
- [im_h, im_w], dtype=np.int32)
- }
- label_info = {
- 'is_crowd': is_crowd,
- 'gt_class': gt_class,
- 'gt_bbox': gt_bbox,
- 'gt_score': gt_score,
- 'difficult': difficult
- }
- if gt_bbox.size > 0:
- self.file_list.append({
- 'image': img_file,
- **
- im_info,
- **
- label_info
- })
- annotations['images'].append({
- 'height': im_h,
- 'width': im_w,
- 'id': int(im_id[0]),
- 'file_name': osp.split(img_file)[1]
- })
- else:
- neg_file_list.append({
- 'image': img_file,
- **
- im_info,
- **
- label_info
- })
- ct += 1
- if self.use_mix:
- self.num_max_boxes = max(self.num_max_boxes, 2 * len(objs))
- else:
- self.num_max_boxes = max(self.num_max_boxes, len(objs))
- if not ct:
- logging.error("No voc record found in %s' % (file_list)", exit=True)
- self.pos_num = len(self.file_list)
- if self.allow_empty and neg_file_list:
- self.file_list += self._sample_empty(neg_file_list)
- logging.info(
- "{} samples in file {}, including {} positive samples and {} negative samples.".
- format(
- len(self.file_list), file_list, self.pos_num,
- len(self.file_list) - self.pos_num))
- self.num_samples = len(self.file_list)
- self.coco_gt = COCO()
- self.coco_gt.dataset = annotations
- self.coco_gt.createIndex()
- self._epoch = 0
- def __getitem__(self, idx):
- sample = copy.deepcopy(self.file_list[idx])
- if self.data_fields is not None:
- sample = {k: sample[k] for k in self.data_fields}
- if self.use_mix and (self.mixup_op.mixup_epoch == -1 or
- self._epoch < self.mixup_op.mixup_epoch):
- if self.num_samples > 1:
- mix_idx = random.randint(1, self.num_samples - 1)
- mix_pos = (mix_idx + idx) % self.num_samples
- else:
- mix_pos = 0
- sample_mix = copy.deepcopy(self.file_list[mix_pos])
- if self.data_fields is not None:
- sample_mix = {k: sample_mix[k] for k in self.data_fields}
- sample = self.mixup_op(sample=[
- DecodeImg(to_rgb=False)(sample),
- DecodeImg(to_rgb=False)(sample_mix)
- ])
- sample = self.transforms(sample)
- return sample
- def __len__(self):
- return self.num_samples
- def set_epoch(self, epoch_id):
- self._epoch = epoch_id
- def cluster_yolo_anchor(self,
- num_anchors,
- image_size,
- cache=True,
- cache_path=None,
- iters=300,
- gen_iters=1000,
- thresh=.25):
- """
- Cluster YOLO anchors.
- Reference:
- https://github.com/ultralytics/yolov5/blob/master/utils/autoanchor.py
- Args:
- num_anchors (int): number of clusters
- image_size (list or int): [h, w], being an int means image height and image width are the same.
- cache (bool): whether using cache
- cache_path (str or None, optional): cache directory path. If None, use `data_dir` of dataset.
- iters (int, optional): iters of kmeans algorithm
- gen_iters (int, optional): iters of genetic algorithm
- threshold (float, optional): anchor scale threshold
- verbose (bool, optional): whether print results
- """
- if cache_path is None:
- cache_path = self.data_dir
- cluster = YOLOAnchorCluster(
- num_anchors=num_anchors,
- dataset=self,
- image_size=image_size,
- cache=cache,
- cache_path=cache_path,
- iters=iters,
- gen_iters=gen_iters,
- thresh=thresh)
- anchors = cluster()
- return anchors
- def add_negative_samples(self, image_dir, empty_ratio=1):
- """将背景图片加入训练
- Args:
- image_dir (str):背景图片所在的文件夹目录。
- empty_ratio (float or None): 用于指定负样本占总样本数的比例。如果为None,保留数据集初始化是设置的`empty_ratio`值,
- 否则更新原有`empty_ratio`值。如果小于0或大于等于1,则保留全部的负样本。默认为1。
- """
- import cv2
- if not osp.isdir(image_dir):
- raise Exception("{} is not a valid image directory.".format(
- image_dir))
- if empty_ratio is not None:
- self.empty_ratio = empty_ratio
- image_list = os.listdir(image_dir)
- max_img_id = max(len(self.file_list) - 1, max(self.coco_gt.getImgIds()))
- neg_file_list = list()
- for image in image_list:
- if not is_pic(image):
- continue
- gt_bbox = np.zeros((0, 4), dtype=np.float32)
- gt_class = np.zeros((0, 1), dtype=np.int32)
- gt_score = np.zeros((0, 1), dtype=np.float32)
- is_crowd = np.zeros((0, 1), dtype=np.int32)
- difficult = np.zeros((0, 1), dtype=np.int32)
- max_img_id += 1
- im_fname = osp.join(image_dir, image)
- img_data = cv2.imread(im_fname, cv2.IMREAD_UNCHANGED)
- im_h, im_w, im_c = img_data.shape
- im_info = {
- 'im_id': np.asarray([max_img_id]),
- 'image_shape': np.array(
- [im_h, im_w], dtype=np.int32)
- }
- label_info = {
- 'is_crowd': is_crowd,
- 'gt_class': gt_class,
- 'gt_bbox': gt_bbox,
- 'gt_score': gt_score,
- 'difficult': difficult
- }
- if 'gt_poly' in self.file_list[0]:
- label_info['gt_poly'] = []
- neg_file_list.append({'image': im_fname, ** im_info, ** label_info})
- if neg_file_list:
- self.allow_empty = True
- self.file_list += self._sample_empty(neg_file_list)
- logging.info(
- "{} negative samples added. Dataset contains {} positive samples and {} negative samples.".
- format(
- len(self.file_list) - self.num_samples, self.pos_num,
- len(self.file_list) - self.pos_num))
- self.num_samples = len(self.file_list)
- def _sample_empty(self, neg_file_list):
- if 0. <= self.empty_ratio < 1.:
- import random
- total_num = len(self.file_list)
- neg_num = total_num - self.pos_num
- sample_num = min((total_num * self.empty_ratio - neg_num) //
- (1 - self.empty_ratio), len(neg_file_list))
- return random.sample(neg_file_list, sample_num)
- else:
- return neg_file_list
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