Title :
Two-Dimensional Multivariate Parametric Models for Radar Applications—Part II: Maximum-Entropy Extensions for Hermitian-Block Matrices
Author :
Abramovich, Yuri I. ; Johnson, Ben A. ; Spencer, Nicholas K.
Author_Institution :
Surveillance & Reconnaissance Div., Defence Sci. & Technol. Org., Adelaide, SA
Abstract :
In a series of two papers, a new class of parametric models for two-dimensional multivariate (matrix-valued, space-time) adaptive processing is introduced. This class is based on the maximum-entropy extension and/or completion of partially specified matrix-valued Hermitian covariance matrices in both the space and time dimensions. The first paper considered the more restricted class of Hermitian Toeplitz-block covariance matrices that model stationary clutter. This second paper deals with the more general class of Hermitian-block covariance matrices that model nonstationary clutter. For our recently proposed 2-D time-varying autoregressive (TVAR) model, we derive optimal and computationally practical suboptimal methods for calculating such parametric models. The maximum-likelihood covariance matrix estimate for the 2-D TVAR model is also derived. The efficacy of the introduced models is illustrated by signal-to-interference-plus-noise ratio (SINR) degradation results obtained when applying the covariance matrix models to space-time adaptive processing filter design, compared with the true clutter covariance matrix provided by the DARPA KASSPER dataset.
Keywords :
Hermitian matrices; adaptive filters; covariance matrices; maximum entropy methods; maximum likelihood estimation; radar clutter; radar signal processing; space-time adaptive processing; Hermitian covariance matrices; Hermitian-Block matrices; Toeplitz-block covariance matrices; adaptive processing; clutter model; maximum-entropy extensions; maximum-likelihood covariance matrix; multivariate parametric models; nonstationary clutter; radar applications; signal-to-interference-plus-noise ratio degradation; space-time adaptive filter design; stationary clutter; time-varying autoregressive model; true clutter covariance matrix; two-dimensional parametric models; Adaptive processing; Time-varying; adaptive processing; autoregressive; nonstationary interference; time-varying;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2008.929867