Joint Sparse Recovery Method for Compressed Sensing With Structured Dictionary Mismatches

IEEE Transactions on Signal Processing(2014)

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摘要
In traditional compressed sensing theory, the dictionary matrix is given a priori, whereas in real applications this matrix suffers from random noise and fluctuations. In this paper, we consider a signal model where each column in the dictionary matrix is affected by a structured noise. This formulation is common in direction-of-arrival (DOA) estimation of off-grid targets, encountered in both radar systems and array processing. We propose to use joint sparse signal recovery to solve the compressed sensing problem with structured dictionary mismatches and also give an analytical performance bound on this joint sparse recovery. We show that, under mild conditions, the reconstruction error of the original sparse signal is bounded by both the sparsity and the noise level in the measurement model. Moreover, we implement fast first-order algorithms to speed up the computing process. Numerical examples demonstrate the good performance of the proposed algorithm and also show that the joint-sparse recovery method yields a better reconstruction result than existing methods. By implementing the joint sparse recovery method, the accuracy and efficiency of DOA estimation are improved in both passive and active sensing cases.
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关键词
measurement model,doa estimation,mimo radars,off-grid targets,passive sensing case,radar systems,compressed sensing,sparse signal reconstruction error,nonuniform linear arrays,structured noise,matrix algebra,array processing,signal model,joint sparse signal recovery method,dictionary matrix,radar signal processing,structured dictionary mismatches,array signal processing,noise level,compressed sensing theory,random noise,direction-of-arrival estimation,signal reconstruction,performance bound,structured dictionary mismatch,active sensing case,with structured dictionary mismatches
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