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Iterative Potts and Blake–Zisserman minimization for the recovery of functions with discontinuities from indirect measurements

机译:迭代Potts和Blake-Zisserman最小化用于从间接测量中恢复不连续的功能

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摘要

Signals with discontinuities appear in many problems in the applied sciences ranging from mechanics, electrical engineering to biology and medicine. The concrete data acquired are typically discrete, indirect and noisy measurements of some quantities describing the signal under consideration. The task is to restore the signal and, in particular, the discontinuities. In this respect, classical methods perform rather poor, whereas non-convex non-smooth variational methods seem to be the correct choice. Examples are methods based on Mumford–Shah and piecewise constant Mumford–Shah functionals and discretized versions which are known as Blake–Zisserman and Potts functionals. Owing to their non-convexity, minimization of such functionals is challenging. In this paper, we propose a new iterative minimization strategy for Blake–Zisserman as well as Potts functionals and a related jump-sparsity problem dealing with indirect, noisy measurements. We provide a convergence analysis and underpin our findings with numerical experiments.
机译:具有不连续性的信号出现在应用科学中的许多问题中,从机械,电气工程到生物学和医学,无所不包。采集的具体数据通常是描述所考虑信号的一些量的离散,间接和噪声测量。任务是恢复信号,尤其是恢复不连续。在这方面,经典方法的效果相当差,而非凸,非平滑的变分方法似乎是正确的选择。示例是基于Mumford-Shah和分段常数Mumford-Shah泛函和离散化版本的方法,这些版本称为Blake-Zisserman和Potts泛函。由于其不凸性,因此最小化此类功能具有挑战性。在本文中,我们为Blake-Zisserman以及Potts函数提出了一种新的迭代最小化策略,并提出了一种处理间接噪声测量的相关跳稀疏问题。我们提供了收敛分析,并通过数值实验来支持我们的发现。

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