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A Non-Local Low-Rank Approach to Enforce Integrability

机译:一种非本地低排名方法来增强可集成性

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摘要

We propose a new approach to enforce integrability using recent advances in non-local methods. Our formulation consists in a sparse gradient data-fitting term to handle outliers together with a gradient-domain non-local low-rank prior. This regularization has two main advantages: 1) the low-rank prior ensures similarity between non-local gradient patches, which helps recovering high-quality clean patches from severe outliers corruption and 2) the low-rank prior efficiently reduces dense noise as it has been shown in recent image restoration works. We propose an efficient solver for the resulting optimization formulation using alternate minimization. Experiments show that the new method leads to an important improvement compared with previous optimization methods and is able to efficiently handle both outliers and dense noise mixed together.
机译:我们提出了一种使用非本地方法的最新进展来实施可集成性的新方法。我们的公式包含一个稀疏的梯度数据拟合项,以处理异常值以及一个梯度域非局部低秩优先级。这种正则化有两个主要优点:1)低秩先验可确保非局部梯度斑块之间的相似性,这有助于从严重的离群值腐败中恢复高质量的干净斑块; 2)低秩先验可有效降低密集噪声在最近的图像恢复作品中显示。我们为使用交替最小化的结果优化公式提出了一种有效的求解器。实验表明,与以前的优化方法相比,该新方法带来了重要的改进,并且能够有效地处理离群值和混合在一起的密集噪声。

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