1. A multi-stage feature distillation-weighted lightweight image super-resolution network.
- Author
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YANG Sheng-rong, CHE Wen-gang, GAO Sheng-xiang, and ZHAO Yun-lai
- Abstract
To address the issues of insufficient receptive fields for extracting low-level features and the lack of reinforcement for local key features in lightweight networks, this paper proposed a multistage feature distillation-weighted lightweight image super-resolution network LMSWN. Firstly, a pyramid- like module is employed to expand the receptive field during shallow feature extraction, integrate feature information of different scales, and enrich the information flow of the network. Secondly, a multi-stage residual distillation-weighted module is designed to enhance the ability of square convolution to extract local key features, recover more detailed information, and improve reconstruction performance. At the same time, the combination of channel separation and 1x1 convolution realizes gradual distillation of features, reducing the number of network parameters. Finally, two adaptive parameters are introduced to jointly learn the features of the two branches of the multi-stage residual distillationweighted module, enhancing the attention to different levels of feature information and further enhancing the representation ability of the network. Experimental results show that the proposed network is fully validated on five benchmark datasets: Set 5, Set 14, BSDS 100, Urban 100, and Manga 109, and its performance exceeds the current mainstream lightweight network [ABSTRACT FROM AUTHOR]
- Published
- 2024