Iterative reweighted algorithms for sparse signal recovery with temporally correlated source vectors

Acoustics, Speech and Signal Processing(2011)

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摘要
Iterative reweighted algorithms, as a class of algorithms for sparse signal recovery, have been found to have better performance than their non-reweighted counterparts. However, for solving the problem of multiple measurement vectors (MMVs), all the existing reweighted algorithms do not account for temporal correlations among source vectors and thus their performance degrades significantly in the presence of the correlations. In this work we propose an iterative reweighted sparse Bayesian learning (SBL) algorithm exploiting the temporal correlations, and motivated by it, we propose a strategy to improve existing reweighted ℓ2 algorithms for the MMV problem, i.e. replacing their row norms with Mahalanobis distance measure. Simulations show that the proposed reweighted SBL algorithm has superior performance, and the proposed improvement strategy is effective for existing reweighted ℓ2 algorithms.
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关键词
iterative reweighted ℓ2 algorithms,compressed sensing,sparse signal recovery,sparse bayesian learning,temporal correlation,mahalanobis distance
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