Hong-an LiDiao WangJing ZhangZhanli LiTian Ma
Image super-resolution reconstruction is one of the methods to improve resolution by learning the inherent features and attributes of images. However, the existing super-resolution models have some problems, such as missing details, distorted natural texture, blurred details and too smooth after image reconstruction. To solve the above problems, this paper proposes a Multi-scale Dual-Attention based Residual Dense Generative Adversarial Network (MARDGAN), which uses multi-branch paths to extract image features and obtain multi-scale feature information. This paper also designs the channel and spatial attention block (CSAB), which is combined with the enhanced residual dense block (ERDB) to extract multi-level depth feature information and enhance feature reuse. In addition, the multi-scale feature information extracted under the three-branch path is fused with global features, and sub-pixel convolution is used to restore the high-resolution image. The experimental results show that the objective evaluation index of MARDGAN on multiple benchmark datasets is higher than other methods, and the subjective visual effect is better. This model can effectively use the original image information to restore the super-resolution image with clearer details and stronger authenticity.
Chunyi ChenXinyi WuXiaojuan HuYU Hai-yang
徐志刚 Xu Zhigang闫娟娟 Yan Juanjuan朱红蕾 Zhu Honglei
LI YunhongMA DengfeiYU HuikangSU XuepingLI JiapengSHI Hanchi
Jinyu ShiZhanjun SiYingxue ZhangXinbin Yang