Multi-fusion Network for Single Image Deraining

2021 IEEE 10th Data Driven Control and Learning Systems Conference (DDCLS)(2021)

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摘要
Single image deraining is regarded as an important research direction in image processing. To tackle the over-smoothing effect caused by the overlapping between rain streaks and the background, we propose a multi-fusion network for single image deraining. A novel local feature fusion block and a global feature fusion block are explored to fuse the high-level features with the low-level ones and correct the low-level representations. By stacking multiple fusion blocks, the proposed network can fully utilize the high-level information and extract powerful feature maps of rain streak layers. In addition, based on the prediction difficulty, a curriculum learning strategy is further explored to make the training process easier. Extensive experiments demonstrate that our network performs favorably against other deraining approaches.
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关键词
Image deraining,Convolutional neural network,Feature fusion block,Curriculum learning
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