# Copyright (c) OpenMMLab. All rights reserved. import argparse import json import math import os import os.path as osp import mmcv from mmocr.datasets.pipelines.crop import crop_img from mmocr.utils.fileio import list_to_file def collect_files(img_dir, gt_dir): """Collect all images and their corresponding groundtruth files. Args: img_dir (str): The image directory gt_dir (str): The groundtruth directory Returns: files (list): The list of tuples (img_file, groundtruth_file) """ assert isinstance(img_dir, str) assert img_dir assert isinstance(gt_dir, str) assert gt_dir ann_list, imgs_list = [], [] for gt_file in os.listdir(gt_dir): ann_list.append(osp.join(gt_dir, gt_file)) imgs_list.append(osp.join(img_dir, gt_file.replace('.json', '.png'))) files = list(zip(sorted(imgs_list), sorted(ann_list))) assert len(files), f'No images found in {img_dir}' print(f'Loaded {len(files)} images from {img_dir}') return files def collect_annotations(files, nproc=1): """Collect the annotation information. Args: files (list): The list of tuples (image_file, groundtruth_file) nproc (int): The number of process to collect annotations Returns: images (list): The list of image information dicts """ assert isinstance(files, list) assert isinstance(nproc, int) if nproc > 1: images = mmcv.track_parallel_progress( load_img_info, files, nproc=nproc) else: images = mmcv.track_progress(load_img_info, files) return images def load_img_info(files): """Load the information of one image. Args: files (tuple): The tuple of (img_file, groundtruth_file) Returns: img_info (dict): The dict of the img and annotation information """ assert isinstance(files, tuple) img_file, gt_file = files assert osp.basename(gt_file).split('.')[0] == osp.basename(img_file).split( '.')[0] # read imgs while ignoring orientations img = mmcv.imread(img_file, 'unchanged') img_info = dict( file_name=osp.join(osp.basename(img_file)), height=img.shape[0], width=img.shape[1], segm_file=osp.join(osp.basename(gt_file))) if osp.splitext(gt_file)[1] == '.json': img_info = load_json_info(gt_file, img_info) else: raise NotImplementedError return img_info def load_json_info(gt_file, img_info): """Collect the annotation information. Args: gt_file (str): The path to ground-truth img_info (dict): The dict of the img and annotation information Returns: img_info (dict): The dict of the img and annotation information """ annotation = mmcv.load(gt_file) anno_info = [] for form in annotation['form']: for ann in form['words']: # Ignore illegible samples if len(ann['text']) == 0: continue x1, y1, x2, y2 = ann['box'] x = max(0, min(math.floor(x1), math.floor(x2))) y = max(0, min(math.floor(y1), math.floor(y2))) w, h = math.ceil(abs(x2 - x1)), math.ceil(abs(y2 - y1)) bbox = [x, y, x + w, y, x + w, y + h, x, y + h] word = ann['text'] anno = dict(bbox=bbox, word=word) anno_info.append(anno) img_info.update(anno_info=anno_info) return img_info def generate_ann(root_path, split, image_infos, preserve_vertical, format): """Generate cropped annotations and label txt file. Args: root_path (str): The root path of the dataset split (str): The split of dataset. Namely: training or test image_infos (list[dict]): A list of dicts of the img and annotation information preserve_vertical (bool): Whether to preserve vertical texts format (str): Using jsonl(dict) or str to format annotations """ dst_image_root = osp.join(root_path, 'dst_imgs', split) if split == 'training': dst_label_file = osp.join(root_path, 'train_label.txt') elif split == 'test': dst_label_file = osp.join(root_path, 'test_label.txt') os.makedirs(dst_image_root, exist_ok=True) lines = [] for image_info in image_infos: index = 1 src_img_path = osp.join(root_path, 'imgs', image_info['file_name']) image = mmcv.imread(src_img_path) src_img_root = image_info['file_name'].split('.')[0] for anno in image_info['anno_info']: word = anno['word'] dst_img = crop_img(image, anno['bbox']) h, w, _ = dst_img.shape # Skip invalid annotations if min(dst_img.shape) == 0: continue # Skip vertical texts if not preserve_vertical and h / w > 2: continue dst_img_name = f'{src_img_root}_{index}.png' index += 1 dst_img_path = osp.join(dst_image_root, dst_img_name) mmcv.imwrite(dst_img, dst_img_path) if format == 'txt': lines.append(f'{osp.basename(dst_image_root)}/{dst_img_name} ' f'{word}') elif format == 'jsonl': lines.append( json.dumps({ 'filename': f'{osp.basename(dst_image_root)}/{dst_img_name}', 'text': word }), ensure_ascii=False) else: raise NotImplementedError list_to_file(dst_label_file, lines) def parse_args(): parser = argparse.ArgumentParser( description='Generate training and test set of FUNSD ') parser.add_argument('root_path', help='Root dir path of FUNSD') parser.add_argument( '--preserve_vertical', help='Preserve samples containing vertical texts', action='store_true') parser.add_argument( '--nproc', default=1, type=int, help='Number of processes') parser.add_argument( '--format', default='jsonl', help='Use jsonl or string to format annotations', choices=['jsonl', 'txt']) args = parser.parse_args() return args def main(): args = parse_args() root_path = args.root_path for split in ['training', 'test']: print(f'Processing {split} set...') with mmcv.Timer(print_tmpl='It takes {}s to convert FUNSD annotation'): files = collect_files( osp.join(root_path, 'imgs'), osp.join(root_path, 'annotations', split)) image_infos = collect_annotations(files, nproc=args.nproc) generate_ann(root_path, split, image_infos, args.preserve_vertical, args.format) if __name__ == '__main__': main()