Super-Resolution (SR) of a single image is a classic problem in computer vision. The goal of image super-resolution is to produce a high-resolution image from a low-resolution image. This paper presents a popular model, super-resolution convolutional neural network (SRCNN), to solve this problem. This paper also examines an improvement to SRCNN using a methodology known as generative adversarial net- work (GAN) which is better at adding texture details to the high resolution output.
Zhisheng LuJuncheng LiHong LiuChaoyan HuangLinlin ZhangTieyong Zeng
Qiang ZhouShifeng ChenJianzhuang LiuXiaoou Tang
Chih Yuan YangChao MaMing–Hsuan Yang