Yuan CaoKaidi DengChen LiXueting ZhangYaqin Li
Convolutional neural networks have greatly improved the performance of image super-resolution. However, perceptual networks have problems such as blurred line structures and a lack of high-frequency information when reconstructing image textures. To mitigate these issues, a generative adversarial network based on multiscale asynchronous learning is proposed in this paper, whereby a pyramid structure is employed in the network model to integrate high-frequency information at different scales. Our scheme employs a U-net as a discriminator to focus on the consistency of adjacent pixels in the input image and uses the LPIPS loss for perceptual extreme super-resolution with stronger supervision. Experiments on benchmark datasets and independent datasets Set5, Set14, BSD100, and SunHays80 show that our approach is effective in restoring detailed texture information from low-resolution images.
Kai LiYe LiangShenghao YangJinfang JiaJianqiang HuangXiaoying Wang
Siddarth B. IyerrAtharv BakshiAasha ShahDr M. V. Sudhamani
Siddarth B. IyerrAtharv BakshiAasha ShahDr M. V. Sudhamani
JIANG Yuning, LI Jinhua, ZHAO Junli