Title :
Detection capabilities evaluation of a constrained structured covariance matrix estimator for radar applications
Author :
Aubry, Augusto ; Carotenuto, Vincenzo ; De Maio, Antonio ; Pallotta, Luca ; Farina, Alfonso
Author_Institution :
Univ. degli Studi di Napoli, Naples, Italy
Abstract :
In this paper we deal with the problem of estimating the disturbance covariance matrix for radar signal processing applications, when a limited number of training data is present. We determine the Maximum Likelihood (ML) estimator of the covariance matrix starting from a set of secondary data, assuming a special covariance structure (i.e. the sum of a positive semidefinite matrix plus a term proportional to the identity), and a condition number upper-bound constraint. We show that the formulated constrained optimization problem falls within the class of MAXDET problems and develop an efficient procedure for its solution in closed form. Remarkably, the computational complexity of the algorithm is of the same order as the eigenvalue decomposition of the sample covariance matrix. At the analysis stage, we assess the performance of the proposed algorithm in terms of detection capability of an Adaptive Matched Filter (AMF) receiver with the proposed estimator in place of the sample covariance matrix, for a spatial processing. The results show that the AMF with the structured constrained covariance matrix estimator can achieve higher Detection Probabilities (PD), than some counterparts available in open literature.
Keywords :
adaptive filters; computational complexity; covariance matrices; eigenvalues and eigenfunctions; matched filters; maximum likelihood estimation; optimisation; radar detection; radar receivers; radar signal processing; MAXDET problems; adaptive matched filter receiver; computational complexity; condition number upper-bound constraint; constrained optimization problem; constrained structured covariance matrix estimator; detection capabilities evaluation; detection capability; detection probabilities; disturbance covariance matrix; eigenvalue decomposition; maximum likelihood estimator; positive semidefinite matrix; radar signal processing applications; spatial processing; special covariance structure; training data; Covariance matrix; Eigenvalues and eigenfunctions; Interference; Jamming; Maximum likelihood estimation; Radar; Vectors;
Conference_Titel :
Advances in Radar and Remote Sensing (TyWRRS), 2012 Tyrrhenian Workshop on
Conference_Location :
Naples
Print_ISBN :
978-1-4673-2443-4
DOI :
10.1109/TyWRRS.2012.6381130