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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Rain Streaks Removal for Single Image via Kernel-Guided Convolutional Neural Network
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Rain Streaks Removal for Single Image via Kernel-Guided Convolutional Neural Network

机译:通过内核引导的卷积神经网络将雨条纹移除单张图像

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摘要

Recently emerged deep learning methods have achieved great success in single image rain streaks removal. However, existing methods ignore an essential factor in the rain streaks generation mechanism, i.e., the motion blur leading to the line pattern appearances. Thus, they generally produce overderaining or underderaining results. In this article, inspired by the generation mechanism, we propose a novel rain streaks removal framework using a kernel-guided convolutional neural network (KGCNN), achieving state-of-the-art performance with a simple network architecture. More precisely, our framework consists of three steps. First, we learn the motion blur kernel by a plain neural network, termed parameter network, from the detail layer of a rainy patch. Then, we stretch the learned motion blur kernel into a degradation map with the same spatial size as the rainy patch. Finally, we use the stretched degradation map together with the detail patches to train a deraining network with a typical ResNet architecture, which produces the rain streaks with the guidance of the learned motion blur kernel. Experiments conducted on extensive synthetic and real data demonstrate the effectiveness of the proposed KGCNN, in terms of rain streaks removal and image detail preservation.
机译:最近出现的深度学习方法取得了巨大的成功,在唯一的图像雨条纹中取得了巨大的成功。然而,现有方法忽视雨条的生成机制中的一个基本因素,即导致线条样式出现的运动模糊。因此,它们通常产生过多或有弱的结果。在本文中,由生成机制的启发,我们使用内核引导的卷积神经网络(KGCNN)提出了一种新颖的雨条纹框架,以简单的网络架构实现最先进的性能。更准确地说,我们的框架由三个步骤组成。首先,我们通过普通神经网络,称为参数网络,从多雨补丁的细节层学习运动模糊内核。然后,将学习的运动模糊内核延伸到具有与多雨补丁相同的空间尺寸的劣化地图中。最后,我们将拉伸的劣化图与细节贴片一起使用典型的Reset架构训练派生网络,其具有所学习运动模糊内核的引导的雨条纹。在广泛的合成和实际数据上进行的实验证明了提出的KGCNN的有效性,就雨条纹去除和图像细节保存而言。

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