''' @paper: GAN Prior Embedded Network for Blind Face Restoration in the Wild (CVPR2021) @author: yangxy (yangtao9009@gmail.com) ''' import os import cv2 import glob import time import numpy as np from PIL import Image import __init_paths from face_model.face_gan import FaceGAN class FaceColorization(object): def __init__(self, base_dir='./', size=1024, model=None, channel_multiplier=2): self.facegan = FaceGAN(base_dir, size, model, channel_multiplier) # make sure the face image is well aligned. Please refer to face_enhancement.py def process(self, gray): # colorize the face out = self.facegan.process(gray) return out if __name__=='__main__': model = {'name':'GPEN-Colorization-1024', 'size':1024} indir = 'examples/grays' outdir = 'examples/outs-colorization' os.makedirs(outdir, exist_ok=True) facecolorizer = FaceColorization(size=model['size'], model=model['name'], channel_multiplier=2) files = sorted(glob.glob(os.path.join(indir, '*.*g'))) for n, file in enumerate(files[:]): filename = os.path.basename(file) grayf = cv2.imread(file, cv2.IMREAD_GRAYSCALE) grayf = cv2.cvtColor(grayf, cv2.COLOR_GRAY2BGR) # channel: 1->3 colorf = facecolorizer.process(grayf) grayf = cv2.resize(grayf, colorf.shape[:2]) cv2.imwrite(os.path.join(outdir, '.'.join(filename.split('.')[:-1])+'.jpg'), np.hstack((grayf, colorf))) if n%10==0: print(n, file)