Dual-Pixel Raindrop Removal.

Yizhou Li, Yusuke Monno, Masatoshi Okutomi
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Abstract

Removing raindrops in images has been addressed as a significant task for various computer vision applications. In this paper, we propose the first method using a dual-pixel (DP) sensor to better address raindrop removal. Our key observation is that raindrops attached to a glass window yield noticeable disparities in DP's left-half and right-half images, while almost no disparity exists for in-focus backgrounds. Therefore, the DP disparities can be utilized for robust raindrop detection. The DP disparities also bring the advantage that the occluded background regions by raindrops are slightly shifted between the left-half and the right-half images. Therefore, fusing the information from the left-half and the right-half images can lead to more accurate background texture recovery. Based on the above motivation, we propose a DP Raindrop Removal Network (DPRRN) consisting of DP raindrop detection and DP fused raindrop removal. To efficiently generate a large amount of training data, we also propose a novel pipeline to add synthetic raindrops to real-world background DP images. Experimental results on constructed synthetic and real-world datasets demonstrate that our DPRRN outperforms existing state-of-the-art methods, especially showing better robustness to real-world situations. Our source codes and datasets will be available at http://www.ok.sc.e.titech.ac.jp/res/SIR/dprrn/dprrn.html.

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双像素雨滴移除。
去除图像中的雨滴是各种计算机视觉应用中的一项重要任务。在本文中,我们首次提出了使用双像素(DP)传感器来更好地处理雨滴去除问题的方法。我们的主要观察结果是,附着在玻璃窗上的雨滴会在 DP 的左半边和右半边图像中产生明显的差异,而对焦背景几乎不存在差异。因此,DP 差异可用于雨滴的稳健检测。DP 差异的另一个优势是,雨滴遮挡的背景区域在左半边和右半边图像之间会有轻微偏移。因此,融合左半边和右半边图像的信息可以更准确地恢复背景纹理。基于上述动机,我们提出了由 DP 雨滴检测和 DP 融合雨滴去除组成的 DP 雨滴去除网络(DPRRN)。为了有效地生成大量训练数据,我们还提出了一个新颖的管道,将合成雨滴添加到真实世界的背景 DP 图像中。在构建的合成和真实世界数据集上的实验结果表明,我们的 DPRRN 优于现有的最先进方法,特别是在真实世界的情况下表现出更好的鲁棒性。我们的源代码和数据集将发布在 http://www.ok.sc.e.titech.ac.jp/res/SIR/dprrn/dprrn.html 网站上。
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