Image inpainting, which is the repair of pixels in damaged areas of an image to make it look as much like the original image as possible. Deep learning-based image inpainting technology is a prominent area of current research interest. This paper focuses on a systematic and comprehensive study of GAN-based image inpainting and presents an analytical summary. Firstly, this paper introduces GAN, which includes the principle of GAN and its mathematical expression. Secondly, the recent GAN-based image inpainting algorithms are summarized, and the advantages and disadvantages of each algorithm are listed. After that, the evaluation metrics, and common datasets of deep learning-based image inpainting are listed. Finally, the existing image inpainting methods are summarized and summarized, and the ideas for future key research directions are presented and prospected.
Xinyi GaoMinh NguyenWei Qi Yan
Zhenyu FuHuaming LiuXuehui BiXiuyou Wang
Junjian HuangMao ZhengZhi-Zhang LiXing HeShiping Wen
Yalin MiaoHuanhuan JiaXuemin LiuYang ZhangLiyi Zhao