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Multi-step fixed-point proximity algorithms for solving a class of optimization problems arising from image processing

机译:多步定点邻近算法,用于解决一类图像处理引起的优化问题

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We introduce in this paper a class of multi-step fixed-point proximity algorithms for solving optimization problems in the context of image processing. The objective functions of such optimization problems are the sum of two convex functions having one composed with an affine transformation which is often the regularization term. We are particularly interested in the scenario when the convex functions involved in the objective function have low regularity (not differentiable) since many practical problems encountered in image processing have this nature. We characterize the solutions of the optimization problem as fixed-points of a mapping defined in terms of the proximity operators of the two convex functions. The algorithmic and mathematical challenges come from the fact that the mapping is a composition of a firmly non-expansive operator with an expansive affine transform. A class of multi-step iterative schemes are developed based on the fixed-point equations that characterize the solutions. For the purpose of studying convergence of the proposed algorithms, we introduce a notion of weakly firmly non-expansive mappings and establish under certain conditions that the sequence generated from a weakly firmly non-expansive mapping is convergent. We use this general convergence result to conclude that the proposed multi-step algorithms converge. We in particular design a class of two-step algorithms for solving the optimization problem which include several existing algorithms as special examples and at the same time offer novel algorithms. Moreover, we identify the well-known alternating split Bregman iteration method as a special case of the proposed algorithm and modify it to improve its convergence result. A class of two-step algorithms for the total variation based image restoration models are presented.
机译:在本文中,我们介绍了一类用于解决图像处理环境中的优化问题的多步定点邻近算法。这种优化问题的目标函数是两个凸函数之和,其中一个凸函数由一个仿射变换组成,通常是正则项。我们特别关注目标函数中涉及的凸函数具有低规则性(不可微)的情况,因为在图像处理中遇到的许多实际问题都具有这种性质。我们将优化问题的解决方案表征为根据两个凸函数的邻近算符定义的映射的固定点。算法和数学上的挑战来自于这样一个事实,即映射是具有扩展仿射变换的坚硬非扩展算子的组合。基于表征解决方案的定点方程,开发了一类多步迭代方案。为了研究所提出算法的收敛性,我们引入了一个弱稳固非扩张映射的概念,并在一定条件下确定了从弱稳固非扩张映射产生的序列是收敛的。我们使用此一般收敛结果得出结论,所提出的多步算法收敛。我们特别设计了用于解决优化问题的一类两步算法,其中包括几个现有算法作为特殊示例,同时提供了新颖的算法。此外,我们将众所周知的交替分裂Bregman迭代方法确定为该算法的特例,并对其进行了修改以提高其收敛效果。提出了一类基于总变化量的图像恢复模型的两步算法。

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