Joint Sub-bands Learning with Clique Structures for Wavelet Domain Super-Resolution

Zhong, Zhisheng, Shen, Tiancheng, Yang, Yibo, Lin, Zhouchen, Zhang, Chao

Neural Information Processing Systems 

Convolutional neural networks (CNNs) have recently achieved great success in single-image super-resolution (SISR). However, these methods tend to produce over-smoothed outputs and miss some textural details. To solve these problems, we propose the Super-Resolution CliqueNet (SRCliqueNet) to reconstruct the high resolution (HR) image with better textural details in the wavelet domain. The proposed SRCliqueNet firstly extracts a set of feature maps from the low resolution (LR) image by the clique blocks group. Then we send the set of feature maps to the clique up-sampling module to reconstruct the HR image.