Rain streaks showing in images or videos would severely degrade the performance of computer vision applications. Thus, it is of vital importance to remove rain streaks and facilitate our vision systems. While recent convolutinal neural network based methods have shown promising results in single image rain removal (SIRR), they fail to effectively capture long-range location dependencies or aggregate convolutional channel information simultaneously. However, as SIRR is a highly illposed problem, these spatial and channel information are very important clues to solve SIRR. First, spatial information could help our model to understand the image context by gathering long-range dependency location information hidden in the image. Second, aggregating channels could help our model to concentrate on channels more related to image background instead of rain streaks. In this paper, we propose a non-local channel aggregation network (NCANet) to address the SIRR problem. NCANet models 2D rainy images as sequences of vectors in three directions, namely vertical direction, transverse direction and channel direction. Recurrently aggregating information from all three directions enables our model to capture the long-range dependencies in both channels and spaitials locations. Extensive experiments on both heavy and light rain image data sets demonstrate the effectiveness of the proposed NCANet model.
翻译:图像或视频中显示的降雨记录会严重降低计算机视觉应用的性能。 因此,消除降雨记录和促进我们的视觉系统至关重要。 虽然最近的气球神经网络方法在单一图像雨水清除方面显示了令人乐观的结果,但它们未能同时有效地捕捉到长距离位置依赖性或集聚变信道信息。然而,由于空间资源研究所是一个高度不健全的问题,这些空间和频道信息是解决SIRRR的非常重要的线索。 首先,空间信息有助于我们的模型通过收集图像中隐藏的长距离依赖定位信息来理解图像背景。 其次,集成频道可以帮助我们的模型集中到与图像背景更相关的频道,而不是雨量。在本文件中,我们提议建立一个非本地通道集合网络(NCANet)来解决SIRR问题。 NCANet模型 2D 降雨图像是三个方向的矢量序列,即垂直方向、反向方向和通道方向。 来自所有三个方向的经常汇总信息能够使我们的模型能够捕捉到在模型和空间网络中收集长距离依赖性的图像信息。