Recurrent Squeeze-and-Excitation Context Aggregation Net for Single Image Deraining

Rain streaks can severely degrade the visibility, which causes many current computer vision algorithms fail to work. So it is necessary to remove the rain from images. We propose a novel deep network architecture based on deep convolutional and recurrent neural networks for single image deraining. As contextual information is very important for rain removal, we first adopt the dilated convolutional neural network to acquire large receptive field. To better fit the rain removal task, we also modify the network. In heavy rain, rain streaks have various directions and shapes, which can be regarded as the accumulation of multiple rain streak layers. We assign different alpha-values to various rain streak layers according to the intensity and transparency by incorporating the squeeze-and-excitation block. Since rain streak layers overlap with each other, it is not easy to remove the rain in one stage. So we further decompose the rain removal into multiple stages. Recurrent neural network is incorporated to preserve the useful information in previous stages and benefit the rain removal in later stages. We conduct extensive experiments on both synthetic and real-world datasets. Our proposed method outperforms the state-of-the-art approaches under all evaluation metrics. Codes and supplementary material are available at our project webpage: https://xialipku.github.io/RESCAN .

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Single Image Deraining Rain100H RESCAN PSNR 26.36 # 11
SSIM 0.786 # 12
Single Image Deraining Rain100L RESCAN SSIM 0.881 # 16
Single Image Deraining Test100 RESCAN SSIM 0.835 # 8
Single Image Deraining Test1200 RESCAN SSIM 0.882 # 12
Single Image Deraining Test2800 RESCAN PSNR 31.29 # 7
SSIM 0.904 # 8

Methods


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