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Video Denoising and Simplification Via Discrete Regularization on Graphs

机译:通过图上的离散正则化进行视频降噪和简化

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In this paper, we present local and nonlocal algorithms for video de-noising and simplification based on discrete regularization on graphs. The main difference between video and image denoising is the temporal redundancy in video sequences. Recent works in the literature showed that motion compensation is counter-productive for video denoising. Our algorithms do not require any motion estimation. In this paper, we consider a video sequence as a volume and not as a sequence of frames. Hence, we combine the contribution of temporal and spatial redundancies in order to obtain high quality results for videos. To enhance the denoising quality, we develop a robust method that benefits from local and nonlocal regularities within the video. We propose an optimized method that is faster than the nonlocal approach, while producing equally attractive results. The experimental results show the efficiency of our algorithms in terms of both Peak Signal to Noise Ratio and subjective visual quality.
机译:在本文中,我们提出了基于图上离散正则化的视频去噪和简化的局部和非局部算法。视频和图像去噪之间的主要区别是视频序列中的时间冗余。文献中的最新工作表明,运动补偿对视频去噪起反作用。我们的算法不需要任何运动估计。在本文中,我们将视频序列视为一个体积而不是一个帧序列。因此,我们结合时间和空间冗余的贡献,以获得视频的高质量结果。为了提高去噪质量,我们开发了一种强大的方法,可以从视频中的本地和非本地规则中受益。我们提出了一种比非局部方法更快的优化方法,同时产生了同样诱人的结果。实验结果显示了我们的算法在峰值信噪比和主观视觉质量方面的效率。

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