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Robust video denoising by low-rank decomposition and modeling noises with mixture of Gaussian

机译:低秩分解和使用高斯混合的噪声的强大视频去噪

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This paper introduces a new approach for video denoising. Based on the idea of patch based low rank matrix completion, we improve the method by modeling noises with Mixture of Gaussians (MoG). By utilizing a series of different Gaussian distributions to fit the representation of video noises without any assumptions on the statistical properties, the parameters of MoG are learned from video data automatically. It can deal with the fact that for most of the time, the real distribution of noises appeared in videos are unknown so that traditional methods do not work well without any priori knowledge. After the model and algorithm statements, we provide a group of experiments on real videos for comparisons with the state-of-art video denoising algorithm, which demonstrates the effectiveness and advantage of our approach.
机译:本文介绍了一种新的视频去噪方法。基于Patch基低秩矩阵完成的思想,我们通过用高斯(MOG)的混合建模噪声来改进方法。通过利用一系列不同的高斯分布来符合视频噪声的表示而不存在统计特性的任何假设,从自动从视频数据中学习MOG参数。它可以处理这一事实,因为大多数时候,视频中出现的噪声的实际分布是​​未知的,因此传统方法在没有任何先验知识的情况下不起作用。在模型和算法陈述之后,我们为实际视频提供了一组实验,以进行与最先进的视频去噪算法进行比较,这证明了我们方法的有效性和优势。

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