基于最优不确定性量化的压缩感知信号恢复新方法

Ming Li, Chenglin Wen
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引用次数: 1

摘要

现有的压缩感知(CS)信号恢复方法将噪声或带有统计信息的扰动粗略地视为有界约束,导致恢复精度相对较差。本文提出了一种新的基于最优不确定性量化(OUQ)框架的信号恢复方法,该方法利用了噪声或扰动的统计信息。首先,我们用OUQ框架描述传统的CS问题,形成一个等价的有限维优化问题。然后提出了有限维优化问题的求解方法。此外,还提出了高维信号的划分方法,解决了OUQ框架无法有效求解高维信号的难题。最后给出了仿真结果,验证了新信号恢复方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new signal recovery method based on optimal uncertainty quantification in compressed sensing
The existing signal recovery methods in compressed sensing (CS) viewed roughly noises or perturbations with statistical information as bounded constraints, which results in relatively poor recovery accuracy. This paper proposes a new signal recovery method based on optimal uncertainty quantification (OUQ) framework, which uses the statistical information of noises or perturbations. Firstly, we describe conventional CS problem using OUQ framework and form an equivalent finite-dimensional optimization problem. Then the solve approach of the finite-dimensional optimization problem is proposed. What is more, the partition method for high-dimensional signals is also proposed to solve the challenge that high-dimensional signals can not be solved effectively using OUQ framework. Finally, the simulation results are further presented to verify the effectiveness of the new signal recovery method.
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