DocumentCode :
48789
Title :
Regularized Covariance Matrix Estimation in Complex Elliptically Symmetric Distributions Using the Expected Likelihood Approach—Part 2: The Under-Sampled Case
Author :
Besson, Olivier ; Abramovich, Yuri I.
Author_Institution :
Dept. Electron. Optronics Signal, Univ. of Toulouse, Toulouse, France
Volume :
61
Issue :
23
fYear :
2013
fDate :
Dec.1, 2013
Firstpage :
5819
Lastpage :
5829
Abstract :
In the first part of these two papers, we extended the expected likelihood approach originally developed in the Gaussian case, to the broader class of complex elliptically symmetric (CES) distributions and complex angular central Gaussian (ACG) distributions. More precisely, we demonstrated that the probability density function (p.d.f.) of the likelihood ratio (LR) for the (unknown) actual scatter matrix Σ0 does not depend on the latter: it only depends on the density generator for the CES distribution and is distribution-free in the case of ACG distributed data, i.e., it only depends on the matrix dimension M and the number of independent training samples T, assuming that T ≥ M. Additionally, regularized scatter matrix estimates based on the EL methodology were derived. In this second part, we consider the under-sampled scenario (T ≤ M) which deserves specific treatment since conventional maximum likelihood estimates do not exist. Indeed, inference about the scatter matrix can only be made in the T-dimensional subspace spanned by the columns of the data matrix. We extend the results derived under the Gaussian assumption to the CES and ACG class of distributions. Invariance properties of the under-sampled likelihood ratio evaluated at Σ0 are presented. Remarkably enough, in the ACG case, the p.d.f. of this LR can be written in a rather simple form as a product of beta distributed random variables. The regularized schemes derived in the first part, based on the EL principle, are extended to the under-sampled scenario and assessed through numerical simulations.
Keywords :
Gaussian distribution; covariance matrices; maximum likelihood estimation; probability; ACG distributed data; Gaussian assumption; T-dimensional subspace; complex angular central Gaussian distributions; complex elliptically symmetric distributions; data matrix; density generator; expected likelihood approach; likelihood ratio; maximum likelihood estimates; probability density function; regularized covariance matrix estimation; scatter matrix; under-sampled case; Covariance matrices; Direction-of-arrival estimation; Distributed databases; Maximum likelihood estimation; Training; Vectors; Covariance matrix estimation; elliptically symmetric distributions; expected likelihood; likelihood ratio; regularization;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2013.2285511
Filename :
6630105
Link To Document :
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