image-inpaintingcolab-notebookhigh-resolutioncolabgenerative-adversarial-networkscnngenerative-adversarial-networkganfourier-transformfourier-convolutionspytorchfourierinpainting-methodsdeep-neural-networksinpainting-algorithmdeep-learninginpaintingcomputer-vision
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77 lines
2.8 KiB
77 lines
2.8 KiB
3 years ago
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#!/usr/bin/env python3
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import os
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import random
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import cv2
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import numpy as np
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from saicinpainting.evaluation.data import PrecomputedInpaintingResultsDataset
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from saicinpainting.evaluation.utils import load_yaml
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from saicinpainting.training.visualizers.base import visualize_mask_and_images
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def main(args):
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config = load_yaml(args.config)
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datasets = [PrecomputedInpaintingResultsDataset(args.datadir, cur_predictdir, **config.dataset_kwargs)
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for cur_predictdir in args.predictdirs]
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assert len({len(ds) for ds in datasets}) == 1
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len_first = len(datasets[0])
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indices = list(range(len_first))
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if len_first > args.max_n:
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indices = sorted(random.sample(indices, args.max_n))
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os.makedirs(args.outpath, exist_ok=True)
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filename2i = {}
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keys = ['image'] + [i for i in range(len(datasets))]
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for img_i in indices:
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try:
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mask_fname = os.path.basename(datasets[0].mask_filenames[img_i])
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if mask_fname in filename2i:
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filename2i[mask_fname] += 1
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idx = filename2i[mask_fname]
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mask_fname_only, ext = os.path.split(mask_fname)
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mask_fname = f'{mask_fname_only}_{idx}{ext}'
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else:
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filename2i[mask_fname] = 1
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cur_vis_dict = datasets[0][img_i]
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for ds_i, ds in enumerate(datasets):
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cur_vis_dict[ds_i] = ds[img_i]['inpainted']
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vis_img = visualize_mask_and_images(cur_vis_dict, keys,
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last_without_mask=False,
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mask_only_first=True,
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black_mask=args.black)
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vis_img = np.clip(vis_img * 255, 0, 255).astype('uint8')
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out_fname = os.path.join(args.outpath, mask_fname)
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vis_img = cv2.cvtColor(vis_img, cv2.COLOR_RGB2BGR)
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cv2.imwrite(out_fname, vis_img)
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except Exception as ex:
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print(f'Could not process {img_i} due to {ex}')
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if __name__ == '__main__':
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import argparse
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aparser = argparse.ArgumentParser()
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aparser.add_argument('--max-n', type=int, default=100, help='Maximum number of images to print')
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aparser.add_argument('--black', action='store_true', help='Whether to fill mask on GT with black')
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aparser.add_argument('config', type=str, help='Path to evaluation config (e.g. configs/eval1.yaml)')
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aparser.add_argument('outpath', type=str, help='Where to put results')
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aparser.add_argument('datadir', type=str,
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help='Path to folder with images and masks')
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aparser.add_argument('predictdirs', type=str,
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nargs='+',
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help='Path to folders with predicts')
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main(aparser.parse_args())
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