Xiaoming ZhuYao Li-junFan LuoKejun WangZhou CheJing‐Kun YanMin ZhouCai Yong-changLingling WangZelong CaoPeng LanFengqing BaiZifang YouXiao HongqiuHaocheng Qi
To improve the problem of poor generalization ability of image deblurring model in real scenes, this paper proposes a model named AS-CycleGAN (Cycle Generative Adversarial Network based on Asymmetric Samples).The model trains on unpaired images by using two "dual form" Conditional Generation Adversarial Networks, adopting global residual connection and ResNetv2 residual module.To enhance the texture effect, the SFT layer is integrated.The experimental results on the data set of Gopro show that the SSIM and PSNR values of our algorithm are 15.97% and 0.75% higher than those of the benchmark model CycleGAN, respectively.By improving the residual structure and adding the SFT layer, the effect is even better.AS-CycleGAN provides a powerful help to solve the motion blur problem in the actual scene.
Yucun ZhangTao LiQun LiXianbin FuTao Kong
Bingcai WeiLi-ye ZHANGXiao-liang MENGKang-tao WANG
Quan YuanJunxia LiLingwei ZhangZhefu WuGuangyu Liu
Tengyue LiShenghui RongBo HeLong Chen