For image reconstruction, the residual network ignores part of the residual information when extracting features. We propose an image super-resolution reconstruction based on residual compensation joint attention network (RCCN). Firstly, we construct a three-way residual network for compensating the feature information of the standard residual network; secondly, we design a joint attention module to complement the pixel-level image attention information by 3D attention while the channel attention learns the channel weight information; finally, our method has clearer results compared with other advanced methods, and the objective evaluation indexes are all greatly improved.
Pei LüFeng XieXiaoyong LiuXi LuJiawang He
DING Zixuan, YU Lei, ZHANG Juan, LI Xiang, WANG Xinyu
刘可文 Liu Kewen马圆 Ma Yuan熊红霞 Xiong Hongxia严泽军 Yan Zejun周志军 Zhou Zhijun刘朝阳 Liu Chaoyang房攀攀 Fang Panpan李小军 Li Xiaojun陈亚雷 Chen Yalei
徐志刚 Xu Zhigang闫娟娟 Yan Juanjuan朱红蕾 Zhu Honglei
WANG Tongguan, LAI Huicheng, CAI Yuxi, GAO Guxue, WANG Liejun