A framework of single-image deraining method based on analysis of rain characteristics

Yinglong Wang, Chen Chen, Shuyuan Zhu, B. Zeng
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引用次数: 18

Abstract

In this paper, we propose an algorithm to remove rain streaks from single color image. Firstly, the guided filter, cooperated with rain pixels detection are used to separate a color image into low-frequency and high-frequency parts so that most rain components exist in the high-frequency part. Then, we focus on the high-frequency part to extract the non-rain details according to the characteristics of the rain in which a dictionary learning method is used. Meanwhile, to enhance the quality of the rain-removed image, the proposed principal direction of an image patch (PDIP) and the sensitivity of variance of color channels (SVCC) are employed in our work to help extract more non-rain details. Compared with the state-of-the-art works, our proposed method can remove the rain (especially heavy rain) from color images more efficiently.
基于降雨特征分析的单幅图像脱轨方法框架
本文提出了一种从单色图像中去除雨纹的算法。首先,利用引导滤波器配合雨像点检测,将彩色图像分离为低频和高频部分,使大部分雨成分存在于高频部分;然后,我们根据雨的特征,重点提取高频部分的非雨细节,其中使用字典学习方法。同时,为了提高去雨图像的质量,我们采用了图像补丁主方向(PDIP)和颜色通道方差灵敏度(SVCC)来提取更多的非雨细节。与现有的方法相比,我们的方法可以更有效地去除彩色图像中的雨(特别是大雨)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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