DocumentCode :
1137309
Title :
Blind adaptation of zero forcing projections and oblique pseudo-inverses for subspace detection and estimation when interference dominates noise
Author :
Scharf, Louis L. ; McCloud, Michael L.
Author_Institution :
Electr. & Comput. Eng. & Stat., Colorado State Univ., Fort Collins, CO, USA
Volume :
50
Issue :
12
fYear :
2002
fDate :
12/1/2002 12:00:00 AM
Firstpage :
2938
Lastpage :
2946
Abstract :
In much of modern radar, sonar, and wireless communication, it seems more reasonable to model "measurement noise" as subspace interference-plus-broadband noise than as colored noise. This observation leads naturally to a variety of detection and estimation problems in the linear statistical model. To solve these problems, one requires oblique pseudo-inverses, oblique projections, and zero-forcing orthogonal projections. The problem is that these operators depend on knowledge of signal and interference subspaces, and this information is often not at hand. More typically, the signal subspace is known, but the interference subspace is unknown. We prove a theorem that allows these operators to be estimated directly from experimental data, without knowledge of the interference subspace. As a byproduct, the theorem shows how signal subspace covariance may be estimated. When the strict identities of the theorem are approximated, then the detectors, estimators, and beamformers of this paper take on the form of adaptive subspace estimators, detectors, and Capon beamformers, all of which are reduced in rank. The fundamental operator turns out to be a certain reduced-rank Wiener filter, which we clarify in the course of our derivations. The results of this paper form a foundation for the rapid adaptation of receivers that are then used for detection and estimation. They may be applied to detection and estimation in radar, sonar, and hyperspectral imaging and to data decoding in multiuser communication receivers.
Keywords :
Wiener filters; adaptive estimation; adaptive filters; adaptive signal detection; adaptive signal processing; array signal processing; blind source separation; covariance analysis; filtering theory; image processing; interference (signal); inverse problems; matched filters; noise; parameter estimation; radar detection; sonar detection; spectral analysis; Capon beamformers; adaptive beamformer; adaptive estimator; adaptive matched filter; adaptive subspace estimators; beamformers; blind adaptation; data decoding; detection problems; estimation problems; hyperspectral imaging; interference; interference subspace; linear statistical model; measurement noise; multiuser communication receivers; noise; oblique projections; oblique pseudo-inverse; oblique pseudo-inverses; radar; reduced-rank Wiener filter; signal subspace covariance estimation; sonar; subspace detection; subspace estimation; wireless communication; zero forcing projections; zero-forcing orthogonal projections; Colored noise; Interference; Noise measurement; Radar detection; Radar imaging; Radar measurements; Sonar detection; Sonar measurements; Wiener filter; Wireless communication;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2002.805245
Filename :
1075988
Link To Document :
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