Title :
Compressive parameter estimation with multiple measurement vectors via structured low-rank covariance estimation
Author :
Yuanxin Li ; Yuejie Chi
fDate :
June 29 2014-July 2 2014
Abstract :
In this paper, we study the problem of frequency estimation from partial observations of multiple measurement vectors under a sparsity constraint. We develop a two-step approach which first estimates a low-rank Hermitian Toeplitz covariance matrix from the partially observed sample covariance matrix via convex optimization, then recovers the set of frequencies via conventional spectrum estimation methods such as MUSIC. Our method doesn´t assume discretization of the underlying frequencies, therefore overcomes the basis mismatch problem in conventional compressed sensing [1], and can possibly recover a higher number of frequencies than the number of samples per measurement vector. Numerical examples are provided to validate the performance of the proposed algorithm, with comparisons against several existing approaches.
Keywords :
Hermitian matrices; Toeplitz matrices; compressed sensing; convex programming; covariance matrices; frequency estimation; parameter estimation; signal classification; vectors; MUSIC; compressed sensing; compressive parameter estimation; convex optimization; frequency estimation; low-rank Hermitian Toeplitz covariance matrix; multiple measurement vectors; partially observed sample covariance matrix; sparsity constraint; spectrum estimation methods; structured low-rank covariance estimation; two-step approach; Covariance matrices; Discrete Fourier transforms; Frequency estimation; Signal processing algorithms; Vectors; Toeplitz covariance estimation; low rank; multiple measurement vectors; partial observations;
Conference_Titel :
Statistical Signal Processing (SSP), 2014 IEEE Workshop on
Conference_Location :
Gold Coast, VIC
DOI :
10.1109/SSP.2014.6884656