Title :
Covariance Structure Maximum-Likelihood Estimates in Compound Gaussian Noise: Existence and Algorithm Analysis
Author :
Pascal, Frédéric ; Chitour, Yacine ; Ovarlez, Jean-Philippe ; Forster, Philippe ; Larzabal, Pascal
Author_Institution :
ENS Cachan, Cachan
Abstract :
Recently, a new adaptive scheme [Conte (1995), Gini (1997)] has been introduced for covariance structure matrix estimation in the context of adaptive radar detection under non-Gaussian noise. This latter has been modeled by compound-Gaussian noise, which is the product c of the square root of a positive unknown variable tau (deterministic or random) and an independent Gaussian vector x, c=radictaux. Because of the implicit algebraic structure of the equation to solve, we called the corresponding solution, the fixed point (FP) estimate. When tau is assumed deterministic and unknown, the FP is the exact maximum-likelihood (ML) estimate of the noise covariance structure, while when tau is a positive random variable, the FP is an approximate maximum likelihood (AML). This estimate has been already used for its excellent statistical properties without proofs of its existence and uniqueness. The major contribution of this paper is to fill these gaps. Our derivation is based on some likelihood functions general properties like homogeneity and can be easily adapted to other recursive contexts. Moreover, the corresponding iterative algorithm used for the FP estimate practical determination is also analyzed and we show the convergence of this recursive scheme, ensured whatever the initialization.
Keywords :
Gaussian noise; adaptive radar; adaptive signal detection; covariance matrices; iterative methods; maximum likelihood estimation; radar detection; recursive estimation; Gaussian vector; adaptive radar detection; algebraic structure; compound Gaussian noise; covariance structure matrix estimation; fixed point estimate; iterative algorithm; maximum-likelihood estimation; recursive scheme; Adaptive detection; compound Gaussian; constant false alarm rate (CFAR) detector; maximum-likelihood (ML) estimate; spherically invariant random vectors (SIRV);
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2007.901652