Lipschitz Bounds for Noise Robustness in Compressive Sensing: Two Algorithms

Marc Nicodeme, C. Dossal, F. Turcu, Y. Berthoumieu
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引用次数: 2

Abstract

The paper deals with numerical estimations of Lipschitz bounds relating locally the reconstruction error to the measurement error in the compressive sensing framework. Most recent theoretical papers in the field parametrize such bounds relatively to certain families of vectors called dual certificates, which are fundamental to several reconstruction criteria. The paper provides two algorithms for computing dual certificates that optimize their related reconstruction error bounds. We give a greedy algorithm that provides a fast approximate solution, and a convex-projection algorithm that computes the exact optimum.
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压缩感知噪声鲁棒性的Lipschitz界:两种算法
本文研究了压缩感知框架中重构误差与测量误差局部相关的Lipschitz界的数值估计。该领域最近的理论论文将这些边界相对于某些称为对偶证书的向量族进行参数化,对偶证书是几个重建准则的基础。本文提供了两种计算双证书的算法,优化了它们相关的重构错误边界。我们给出了一个贪婪算法,它提供了一个快速的近似解,和一个凸投影算法,计算精确的最优。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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