Image rain removal via multi-scale feature fusion based on attention mechanism
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TP391.4

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    Abstract:

    Due to the diversity of the distribution and shape of rain streaks, existing rain removal algorithms produce problems such as blurred image background and poor generalization performance while removing rain.A multi-scale feature fusion image rain removal approach based on attention mechanism is proposed to address these problems.The feature extraction consists of multiple residual groups containing two multi-scale attention residual blocks, which use the multi-scale feature extraction module to extract and aggregate feature information at different scales and further improve the feature extraction capability of the network through coordinate attention.Local feature fusion is performed within groups, and the global feature fusion attention module is used between groups to better fuse features at different levels and to focus the network on rain streak regions through pixel attention.The quantitative metrics of the proposed approach are significantly improved compared with other existing image rain removal algorithms on both simulated and real rain image datasets, and the rain removal images are greatly improved in both visual effects and generalization performance.

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LIU Zhongyang, ZHOU Jie, LU Jiaxin, MIAO Zelin, SHAO Genfu, JIANG Kaiqiang, GAO Wei. Image rain removal via multi-scale feature fusion based on attention mechanism[J]. Journal of Nanjing University of Information Science & Technology,2023,15(5):505-513

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  • Received:July 18,2022
  • Online: October 24,2023
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