DocumentCode :
3604201
Title :
Low-Rank Matrix Decomposition and Spatio-Temporal Sparse Recovery for STAP Radar
Author :
Sen, Satyabrata
Author_Institution :
Center for Eng. Syst. Adv. Res., Oak Ridge Nat. Lab., Oak Ridge, TN, USA
Volume :
9
Issue :
8
fYear :
2015
Firstpage :
1510
Lastpage :
1523
Abstract :
We develop space-time adaptive processing (STAP) methods by leveraging the advantages of sparse signal processing techniques in order to detect a slowly-moving target. We observe that the inherent sparse characteristics of a STAP problem can be formulated as the low-rankness of clutter covariance matrix when compared to the total adaptive degrees-of-freedom, and also as the sparse interference spectrum on the spatio-temporal domain. By exploiting these sparse properties, we propose two approaches for estimating the interference covariance matrix. In the first approach, we consider a constrained matrix rank minimization problem (RMP) to decompose the sample covariance matrix into a low-rank positive semidefinite and a diagonal matrix. The solution of RMP is obtained by applying the trace minimization technique and the singular value decomposition with matrix shrinkage operator. Our second approach deals with the atomic norm minimization problem to recover the clutter response-vector that has a sparse support on the spatio-temporal plane. We use convex relaxation based standard sparse-recovery techniques to find the solutions. With extensive numerical examples, we demonstrate the performances of proposed STAP approaches with respect to both the ideal and practical scenarios, involving Doppler-ambiguous clutter ridges, spatial and temporal decorrelation effects. The low-rank matrix decomposition based solution requires secondary measurements as many as twice the clutter rank to attain a near-ideal STAP performance; whereas the spatio-temporal sparsity based approach needs a considerably small number of secondary data.
Keywords :
adaptive signal detection; covariance matrices; minimisation; radar detection; singular value decomposition; STAP radar; constrained matrix rank minimization problem; convex relaxation; interference covariance matrix estimation; low rank clutter covariance matrix; low-rank matrix decomposition; singular value decomposition; slow moving target; space-time adaptive processing method; sparse recovery technique; spatio-temporal sparse recovery; target detection; trace minimization technique; Clutter; Covariance matrices; Linear antenna arrays; Matrix decomposition; Sparse matrices; Convex relaxation; low-rank matrix; matrix shrinkage operator; semidefinite program; space-time adaptive processing; sparse signal processing; trace minimization problem;
fLanguage :
English
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
Publisher :
ieee
ISSN :
1932-4553
Type :
jour
DOI :
10.1109/JSTSP.2015.2464187
Filename :
7177046
Link To Document :
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