Multi-fusion Network for Single Image Deraining

Huanlei Guo, Jie Wang, Tingwei Zhou, Wenkang Huang, Junqing Yuan, Xiongxiong He
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Abstract

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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单幅图像训练的多融合网络
单幅图像去噪是图像处理领域的一个重要研究方向。针对雨纹与背景重叠造成的过度平滑效应,提出了一种单幅图像去噪的多融合网络。探索了一种新的局部特征融合块和全局特征融合块,将高阶特征与低阶特征融合,并对低阶特征表示进行校正。通过叠加多个融合块,该网络可以充分利用高层信息,提取出功能强大的雨纹层特征图。此外,在预测难度的基础上,进一步探索了课程学习策略,使训练过程更加简单。大量的实验表明,我们的网络优于其他的训练方法。
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