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Erase or Fill? Deep Joint Recurrent Rain Removal and Reconstruction in Videos

机译:擦除或填写?深度联合反复雨量和重建视频

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In this paper, we address the problem of video rain removal by constructing deep recurrent convolutional networks. We visit the rain removal case by considering rain occlusion regions, i.e. the light transmittance of rain streaks is low. Different from additive rain streaks, in such rain occlusion regions, the details of background images are completely lost. Therefore, we propose a hybrid rain model to depict both rain streaks and occlusions. With the wealth of temporal redundancy, we build a Joint Recurrent Rain Removal and Reconstruction Network (J4R-Net) that seamlessly integrates rain degradation classification, spatial texture appearances based rain removal and temporal coherence based background details reconstruction. The rain degradation classification provides a binary map that reveals whether a location is degraded by linear additive streaks or occlusions. With this side information, the gate of the recurrent unit learns to make a trade-off between rain streak removal and background details reconstruction. Extensive experiments on a series of synthetic and real videos with rain streaks verify the superiority of the proposed method over previous state-of-the-art methods.
机译:在本文中,我们通过构建深度经常性卷积网络来解决视频雨拆除问题。考虑雨闭塞区,即雨条纹的透光率低,我们参观了雨拆卸案。与添加剂雨条不同,在这种雨闭塞区域中,背景图像的细节完全丢失。因此,我们提出了一个混合雨模型来描绘雨条纹和闭塞。随着时间的财富冗余,我们建立了一个联合反复雨量和重建网络(J4R-NET),无缝地整合雨降解分类,空间纹理外观基于雨拆卸和时间一致性的背景细节重建。雨降解分类提供了二进制图,该二进制图显示了线性添加剂条纹或闭塞是否降解了位置。通过这种侧面信息,经常性单元的栅极学习在雨条纹拆除和背景细节重建之间进行权衡。在具有雨条纹的一系列合成和真实视频的广泛实验验证了在先前最先进的方法上提出的方法的优越性。

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