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Statistical Recovery of Simultaneously Sparse Time-Varying Signals From Multiple Measurement Vectors

机译:从多个测量向量中同时恢复同时稀疏的时变信号的统计恢复

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摘要

In this paper, we propose a new sparse signal recovery algorithm, referred to as sparse Kalman tree search (sKTS), that provides a robust reconstruction of the sparse vector when the sequence of correlated observation vectors are available. The proposed sKTS algorithm builds on expectation-maximization (EM) algorithm and consists of two main operations: 1) Kalman smoothing to obtain the a posteriori statistics of the source signal vectors and 2) greedy tree search to estimate the support of the signal vectors. Through numerical experiments, we demonstrate that the proposed sKTS algorithm is effective in recovering the sparse signals and performs close to the Oracle (genie-based) Kalman estimator.
机译:在本文中,我们提出了一种新的稀疏信号恢复算法,称为稀疏卡尔曼树搜索(sKTS),当相关观测向量序列可用时,该算法可以对稀疏向量进行鲁棒重建。所提出的sKTS算法建立在期望最大化(EM)算法的基础上,由两个主要操作组成:1)卡尔曼平滑得到源信号向量的后验统计;2)贪婪树搜索估计信号向量的支持。通过数值实验,证明了所提出的sKTS算法在恢复稀疏信号方面是有效的,并且性能接近Oracle(基于精灵)卡尔曼估计器。

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