# Copyright (C) 2022-present Naver Corporation. All rights reserved. # Licensed under CC BY-NC-SA 4.0 (non-commercial use only). # # -------------------------------------------------------- # Extracting crops for pre-training # -------------------------------------------------------- import os import argparse from tqdm import tqdm from PIL import Image import functools from multiprocessing import Pool import math def arg_parser(): parser = argparse.ArgumentParser('Generate cropped image pairs from image crop list') parser.add_argument('--crops', type=str, required=True, help='crop file') parser.add_argument('--root-dir', type=str, required=True, help='root directory') parser.add_argument('--output-dir', type=str, required=True, help='output directory') parser.add_argument('--imsize', type=int, default=256, help='size of the crops') parser.add_argument('--nthread', type=int, required=True, help='number of simultaneous threads') parser.add_argument('--max-subdir-levels', type=int, default=5, help='maximum number of subdirectories') parser.add_argument('--ideal-number-pairs-in-dir', type=int, default=500, help='number of pairs stored in a dir') return parser def main(args): listing_path = os.path.join(args.output_dir, 'listing.txt') print(f'Loading list of crops ... ({args.nthread} threads)') crops, num_crops_to_generate = load_crop_file(args.crops) print(f'Preparing jobs ({len(crops)} candidate image pairs)...') num_levels = min(math.ceil(math.log(num_crops_to_generate, args.ideal_number_pairs_in_dir)), args.max_subdir_levels) num_pairs_in_dir = math.ceil(num_crops_to_generate ** (1/num_levels)) jobs = prepare_jobs(crops, num_levels, num_pairs_in_dir) del crops os.makedirs(args.output_dir, exist_ok=True) mmap = Pool(args.nthread).imap_unordered if args.nthread > 1 else map call = functools.partial(save_image_crops, args) print(f"Generating cropped images to {args.output_dir} ...") with open(listing_path, 'w') as listing: listing.write('# pair_path\n') for results in tqdm(mmap(call, jobs), total=len(jobs)): for path in results: listing.write(f'{path}\n') print('Finished writing listing to', listing_path) def load_crop_file(path): data = open(path).read().splitlines() pairs = [] num_crops_to_generate = 0 for line in tqdm(data): if line.startswith('#'): continue line = line.split(', ') if len(line) < 8: img1, img2, rotation = line pairs.append((img1, img2, int(rotation), [])) else: l1, r1, t1, b1, l2, r2, t2, b2 = map(int, line) rect1, rect2 = (l1, t1, r1, b1), (l2, t2, r2, b2) pairs[-1][-1].append((rect1, rect2)) num_crops_to_generate += 1 return pairs, num_crops_to_generate def prepare_jobs(pairs, num_levels, num_pairs_in_dir): jobs = [] powers = [num_pairs_in_dir**level for level in reversed(range(num_levels))] def get_path(idx): idx_array = [] d = idx for level in range(num_levels - 1): idx_array.append(idx // powers[level]) idx = idx % powers[level] idx_array.append(d) return '/'.join(map(lambda x: hex(x)[2:], idx_array)) idx = 0 for pair_data in tqdm(pairs): img1, img2, rotation, crops = pair_data if -60 <= rotation and rotation <= 60: rotation = 0 # most likely not a true rotation paths = [get_path(idx + k) for k in range(len(crops))] idx += len(crops) jobs.append(((img1, img2), rotation, crops, paths)) return jobs def load_image(path): try: return Image.open(path).convert('RGB') except Exception as e: print('skipping', path, e) raise OSError() def save_image_crops(args, data): # load images img_pair, rot, crops, paths = data try: img1, img2 = [load_image(os.path.join(args.root_dir, impath)) for impath in img_pair] except OSError as e: return [] def area(sz): return sz[0] * sz[1] tgt_size = (args.imsize, args.imsize) def prepare_crop(img, rect, rot=0): # actual crop img = img.crop(rect) # resize to desired size interp = Image.Resampling.LANCZOS if area(img.size) > 4*area(tgt_size) else Image.Resampling.BICUBIC img = img.resize(tgt_size, resample=interp) # rotate the image rot90 = (round(rot/90) % 4) * 90 if rot90 == 90: img = img.transpose(Image.Transpose.ROTATE_90) elif rot90 == 180: img = img.transpose(Image.Transpose.ROTATE_180) elif rot90 == 270: img = img.transpose(Image.Transpose.ROTATE_270) return img results = [] for (rect1, rect2), path in zip(crops, paths): crop1 = prepare_crop(img1, rect1) crop2 = prepare_crop(img2, rect2, rot) fullpath1 = os.path.join(args.output_dir, path+'_1.jpg') fullpath2 = os.path.join(args.output_dir, path+'_2.jpg') os.makedirs(os.path.dirname(fullpath1), exist_ok=True) assert not os.path.isfile(fullpath1), fullpath1 assert not os.path.isfile(fullpath2), fullpath2 crop1.save(fullpath1) crop2.save(fullpath2) results.append(path) return results if __name__ == '__main__': args = arg_parser().parse_args() main(args)