基于矩阵分解的视频去噪与去噪

Weihong Ren, Jiandong Tian, Zhi Han, Antoni B. Chan, Yandong Tang
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引用次数: 129

摘要

现有的去除雪/雨的方法对于大雪/雨和动态场景往往失效。失败的一个原因是假设所有的雪花/雨条纹在雪/雨场景中都是稀疏的。二是现有的方法往往不能区分运动物体和雪花/雨条纹。针对上述问题,本文提出了一种基于矩阵分解的视频降噪降噪模型。我们把雪花/雨点分为两类:稀疏的和密集的。利用背景波动和光流信息,将运动物体和稀疏雪花/雨条纹的检测表述为多标签马尔科夫随机场(mrf)。对于密集的雪花/雨条,它们被认为服从高斯分布。场景背景中的雪花/雨纹,包括稀疏的和密集的,通过背景的低阶表示来去除。同时,在我们的模型中设计了一个组稀疏项来过滤移动物体中的雪/雨像素。实验结果表明,我们提出的模型比目前最先进的除雪和除雨方法效果更好。
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Video Desnowing and Deraining Based on Matrix Decomposition
The existing snow/rain removal methods often fail for heavy snow/rain and dynamic scene. One reason for the failure is due to the assumption that all the snowflakes/rain streaks are sparse in snow/rain scenes. The other is that the existing methods often can not differentiate moving objects and snowflakes/rain streaks. In this paper, we propose a model based on matrix decomposition for video desnowing and deraining to solve the problems mentioned above. We divide snowflakes/rain streaks into two categories: sparse ones and dense ones. With background fluctuations and optical flow information, the detection of moving objects and sparse snowflakes/rain streaks is formulated as a multi-label Markov Random Fields (MRFs). As for dense snowflakes/rain streaks, they are considered to obey Gaussian distribution. The snowflakes/rain streaks, including sparse ones and dense ones, in scene backgrounds are removed by low-rank representation of the backgrounds. Meanwhile, a group sparsity term in our model is designed to filter snow/rain pixels within the moving objects. Experimental results show that our proposed model performs better than the state-of-the-art methods for snow and rain removal.
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