import glob import os def regroup_reds_dataset(train_path, val_path): """Regroup original REDS datasets. We merge train and validation data into one folder, and separate the validation clips in reds_dataset.py. There are 240 training clips (starting from 0 to 239), so we name the validation clip index starting from 240 to 269 (total 30 validation clips). Args: train_path (str): Path to the train folder. val_path (str): Path to the validation folder. """ # move the validation data to the train folder val_folders = glob.glob(os.path.join(val_path, '*')) for folder in val_folders: new_folder_idx = int(folder.split('/')[-1]) + 240 os.system(f'cp -r {folder} {os.path.join(train_path, str(new_folder_idx))}') if __name__ == '__main__': # train_sharp train_path = 'trainsets/REDS/train_sharp' val_path = 'trainsets/REDS/val_sharp' regroup_reds_dataset(train_path, val_path) # train_sharp_bicubic train_path = 'trainsets/REDS/train_sharp_bicubic/X4' val_path = 'trainsets/REDS/val_sharp_bicubic/X4' regroup_reds_dataset(train_path, val_path) # train_blur (for video deblurring) train_path = 'trainsets/REDS/train_blur' val_path = 'trainsets/REDS/val_blur' regroup_reds_dataset(train_path, val_path)