“…Differential shooting principle. With the rapid development of deep learning techniques in the past few years, deep learning-based image demoiréing methods have been actively explored.Researchers have proposed a variety of deep learning-based demoiréing models, ranging from convolutional neural networks (CNN) (e.g., DMCNN[10]) to generative adversarial nets (GAN)[11](e.g., MR-GAN[12] and cyclic GAN[13]), can remove moiré within 1s, and achieved the best score in image quality evaluation. In general, the methods of image demoiréing with deep learning differ in the following aspects: sampling methods[10],[14],[15], network design[14],[16],[17], baseline model[15],[16],[18],[21],[60],[61], and learning strategies[12],[18]-[22].While there is a screen-shots image demoiréing survey[23], only two methods are involved, which is not comprehensive.…”