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首页> 外文期刊>Circuits and Systems for Video Technology, IEEE Transactions on >Exemplar-Based Denoising: A Unified Low-Rank Recovery Framework
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Exemplar-Based Denoising: A Unified Low-Rank Recovery Framework

机译:基于示例的去噪:一个统一的低级恢复框架

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摘要

Exemplar-based image denoising algorithms have shown great potential for image restoration with a multitude of existing models. In this paper, we interpret nonlocal similar patch-based denoising as a problem of low-rank recovery. This offers a physically plausible model and unifies several existing techniques in a single low-rank recovery framework. The framework can handle complex noise models, such as zero-mean Gaussian noise, impulse noise, and any other noise that can be approximated by mixing these two kinds of noise. Moreover, we introduce a new nonconvex surrogate for the $l_{0}$ -norm and find the optimal solution of the optimization problems when the new norm is applied to low-rank recovery. The experimental results with different kinds of noise confirm the effectiveness of the proposed low-rank recovery framework and the new norm.
机译:基于示例的图像去噪算法已经显示了具有多种现有模型的图像恢复的巨大潜力。在本文中,我们将非局部类似补丁的去噪解释为低级恢复的问题。这提供了物理合理的模型,并在单个低级恢复框架中统一了几种现有技术。该框架可以处理复杂的噪声模型,例如零均衡的高斯噪声,脉冲噪声和任何其他可以通过混合这两种噪声来近似的噪声。此外,我们为此介绍了一个新的非谐波代理<内联公式XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”> $ L_ {0} $ -norm并找到新规范应用于低级恢复时优化问题的最佳解决方案。具有不同种类噪声的实验结果证实了提出的低级恢复框架和新规范的有效性。

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