Title :
Bayesian parametric GLRT for knowledge-aided space-time adaptive processing
Author :
Wang, Pu ; Li, Hongbin ; Himed, Braham
Author_Institution :
Stevens Inst. of Technol., Hoboken, NJ, USA
Abstract :
In this paper, the problem of detecting a multichannel signal in the presence of spatially and temporally colored disturbance is considered. By modeling the disturbance as a multichannel auto-regressive (AR) model and treating the spatial covariance matrix as a random matrix, a parametric generalized likelihood ratio test (P-GLRT) is developed based on a Bayesian framework. The resulting P-GLRT, which is denoted as the knowledge-aided P-GLRT (KA-PGLRT), employs a fully Bayesian principle and performs a jointly spatio subtemporal whitening process. The KA-PGLRT detector is able to utilize some prior knowledge through a colored loading step between the prior spatial covariance matrix and the conventional estimate of the P-GLRT. Simulation results verify that die KA-PGLRT detector yields better detection performance over other parametric detectors.
Keywords :
Bayes methods; autoregressive processes; covariance matrices; signal detection; space-time adaptive processing; Bayesian parametric GLRT; KA-PGLRT detector; jointly spatio subtemporal whitening process; knowledge-aided P-GLRT; knowledge-aided space-time adaptive processing; multichannel autoregressive model; multichannel signal detection; parametric detectors; parametric generalized likelihood ratio test; random matrix; spatial covariance matrix; temporally colored disturbance; Bayesian methods; Covariance matrix; Detectors; Interference; Loading; Signal to noise ratio; Training; Bayesian inference; Knowledge-aided space-time adaptive signal processing; generalized likelihood ratio test; multichannel auto-regressive model; parametric approach;
Conference_Titel :
Radar Conference (RADAR), 2011 IEEE
Conference_Location :
Kansas City, MO
Print_ISBN :
978-1-4244-8901-5
DOI :
10.1109/RADAR.2011.5960553