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Mixed Gaussian-impulse video noise removal via temporal-spatial decomposition

机译:通过时空分解去除混合高斯脉冲视频噪声

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This paper presents a novel denoising scheme for video sequences corrupted by mixed Gaussian-impulse noise. From a global viewpoint, such a video sequence contains three parts: temporal-spatially correlated video content, uncorrelated dense Gaussian noise, and uncorrelated sparse impulse noise. This fact motivates us to formulate the mixed Gaussian-impulse noise removal task as a temporal-spatial decomposition problem, which amounts to a convex program. A two-stage algorithm is developed to solve this problem efficiently. Effectiveness of the proposed algorithm on mixed Gaussian-impulse noise removal is validated through experiments. The results are satisfactory in both visual quality and PSNR values, while very few prior knowledge of noise statistic is required compared to most state-of-the-art methods.
机译:本文针对混合高斯脉冲噪声破坏的视频序列提出了一种新的去噪方案。从全局的角度来看,这样的视频序列包含三个部分:时间空间相关的视频内容,不相关的密集高斯噪声和不相关的稀疏脉冲噪声。这一事实促使我们将混合的高斯脉冲噪声去除任务表述为时空分解问题,这相当于一个凸程序。开发了一种两阶段算法来有效解决该问题。通过实验验证了所提算法对混合高斯脉冲噪声去除的有效性。与大多数最新方法相比,结果在视觉质量和PSNR值上均令人满意,而所需的噪声统计信息知识很少。

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