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An epigraphical convex optimization approach for multicomponent image restoration using non-local structure tensor

机译:基于非局部结构张量的多分量图像复原的凸凸凸优化方法

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TV-like constraints/regularizations are useful tools in variational methods for multicomponent image restoration. In this paper, we design more sophisticated non-local TV constraints which are derived from the structure tensor. The proposed approach allows us to measure the non-local variations, jointly for the different components, through various ℓ1,p matrix norms with p ≥ 1. The related convex constrained optimization problems are solved through a novel epigraphical projection method. This formulation can be efficiently implemented thanks to the flexibility offered by recent primal-dual proximal algorithms. Experiments carried out for color images demonstrate the interest of considering a Non-Local Structure Tensor TV and show that the proposed epigraphical projection method leads to significant improvements in terms of convergence speed over existing numerical solutions.
机译:类似电视的约束/正则化是用于多分量图像恢复的变体方法中的有用工具。在本文中,我们设计了来自结构张量的更复杂的非本地电视约束。所提出的方法使我们能够通过p≥1的各种ℓ 1,p 矩阵范数来共同测量不同分量的非局部变化。弹射投影法。由于最近的原始对偶近端算法提供了灵活性,因此可以有效地实现此公式。针对彩色图像进行的实验证明了考虑使用非局部结构张量TV的兴趣,并且表明,与现有的数值解决方案相比,所提出的弹射投影方法在收敛速度方面带来了显着的改善。

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