"""This script is the data preparation script for Deep3DFaceRecon_pytorch """ import os import numpy as np import argparse from util.detect_lm68 import detect_68p,load_lm_graph from util.skin_mask import get_skin_mask from util.generate_list import check_list, write_list import warnings warnings.filterwarnings("ignore") parser = argparse.ArgumentParser() parser.add_argument('--data_root', type=str, default='datasets', help='root directory for training data') parser.add_argument('--img_folder', nargs="+", required=True, help='folders of training images') parser.add_argument('--mode', type=str, default='train', help='train or val') opt = parser.parse_args() os.environ['CUDA_VISIBLE_DEVICES'] = '0' def data_prepare(folder_list,mode): lm_sess,input_op,output_op = load_lm_graph('./checkpoints/lm_model/68lm_detector.pb') # load a tensorflow version 68-landmark detector for img_folder in folder_list: detect_68p(img_folder,lm_sess,input_op,output_op) # detect landmarks for images get_skin_mask(img_folder) # generate skin attention mask for images # create files that record path to all training data msks_list = [] for img_folder in folder_list: path = os.path.join(img_folder, 'mask') msks_list += ['/'.join([img_folder, 'mask', i]) for i in sorted(os.listdir(path)) if 'jpg' in i or 'png' in i or 'jpeg' in i or 'PNG' in i] imgs_list = [i.replace('mask/', '') for i in msks_list] lms_list = [i.replace('mask', 'landmarks') for i in msks_list] lms_list = ['.'.join(i.split('.')[:-1]) + '.txt' for i in lms_list] lms_list_final, imgs_list_final, msks_list_final = check_list(lms_list, imgs_list, msks_list) # check if the path is valid write_list(lms_list_final, imgs_list_final, msks_list_final, mode=mode) # save files if __name__ == '__main__': print('Datasets:',opt.img_folder) data_prepare([os.path.join(opt.data_root,folder) for folder in opt.img_folder],opt.mode)