一种基于梯度的归一化约束传感矩阵优化算法

Zeru Lu, Huang Bai, Binbin Sun
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引用次数: 2

摘要

本文研究了压缩感知(CS)系统中感知矩阵Φ的设计问题,其中假设字典Ψ是给定的。在等效字典a = ΦΨ归一化的约束下,制定了最优传感矩阵设计,以识别那些Φ最小化所提出的基于相干的度量。与现有的度量不同,提出的度量被定义为基于lp范数的相干因子的总和。针对这一问题,提出了一种基于梯度的算法。实验和仿真结果表明,该算法得到的传感矩阵显著提高了CS系统的信号恢复精度,优于现有算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A gradient-based algorithm for optimizing sensing matrix with normalization constraint
This paper deals with the problem of designing the sensing matrix Φ for a compressed sensing (CS) system, in which the dictionary Ψ is assumed to be given. The optimal sensing matrix design is formulated as to identify those Φ which minimize a proposed coherence-based measure with the constraint that the equivalent dictionary A = ΦΨ is normalized. Unlike the existing measures, the proposed measure is defined as the sum of lp-norm-based coherence factors. A gradient-based algorithm is derived for solving this problem. Experiments are carried out and simulations show that the sensing matrix obtained by the proposed algorithm significantly improves the signal recovery accuracy of the CS system and outperforms those by existing algorithms.
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