具有动态变化支持度的稀疏信号贪婪恢复

Sun Hong Lim, J. Yoo, Sunwoo Kim, J. Choi
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引用次数: 0

摘要

本文提出了一种低复杂度贪婪恢复算法,该算法可以恢复具有时变支持的稀疏信号。我们考虑信号的支持度(即非零元素的指标)随一定的时间相关性平滑变化的情况。我们将支持度指标建模为离散状态马尔可夫随机过程。然后,我们将信号恢复问题表述为基于多个测量向量的支持指标集和非零分量幅值的联合估计。我们依次根据最大后验(MAP)准则识别支撑元素,并减去重构信号分量,用于检测下一个支撑元素。数值计算结果表明,该算法在较低的计算复杂度下取得了令人满意的恢复性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Greedy Recovery of Sparse Signals with Dynamically Varying Support
In this paper, we propose a low-complexity greedy recovery algorithm which can recover sparse signals with time-varying support. We consider the scenario where the support of the signal (i.e., the indices of nonzero elements) varies smoothly with certain temporal correlation. We model the indices of support as discrete-state Markov random process. Then, we formulate the signal recovery problem as joint estimation of the set of the support indices and the amplitude of nonzero entries based on the multiple measurement vectors. We successively identify the element of the support based on the maximum a posteriori (MAP) criteria and subtract the reconstructed signal component for detection of the next element of the support. Our numerical evaluation shows that the proposed algorithm achieves satisfactory recovery performance at low computational complexity.
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