DocumentCode :
1160168
Title :
Trained detection of buried mines in SAR images via the deflection-optimal criterion
Author :
Cosgrove, Russell B. ; Milanfar, Peyman ; Kositsky, Joel
Author_Institution :
SRI Int., Menlo Park, CA, USA
Volume :
42
Issue :
11
fYear :
2004
Firstpage :
2569
Lastpage :
2575
Abstract :
In this paper, we apply a deflection-optimal linear-quadratic detector to the detection of buried mines in images formed by a forward-looking ground-penetrating synthetic aperture radar. The detector is a linear-quadratic form that maximizes the output SNR (deflection), and its parameters are estimated from a set of training data. We show that this detector is useful when the signal to be detected is expected to be stochastic, with an unknown distribution, and when only a small set of training data is available to estimate its statistics. The detector structure can be understood in terms of the singular value decomposition; the statistical variations of the target signature are modeled using a compact set of orthogonal "eigenmodes" (or principal components) of the training dataset. Because only the largest eigenvalues and associated eigenvectors contribute, statistical variations that are underrepresented in the training data do not significantly corrupt the detector performance. The resulting detection algorithm is tested on data that are not in the training set, which has been collected at government test sites, and the algorithm performance is reported.
Keywords :
eigenvalues and eigenfunctions; geophysical signal processing; geophysical techniques; ground penetrating radar; landmine detection; principal component analysis; radar target recognition; remote sensing by radar; signal detection; synthetic aperture radar; SAR images; automatic target recognition; deflection maximization; deflection-optimal linear-quadratic detection; detection algorithm; eigenvalues; eigenvectors; forward-looking radar; ground-penetrating radar; orthogonal eigenmodes; output SNR maximization; principal components; signal detection; singular value decomposition; statistical variations; stochastic signal; synthetic aperture radar; target signature; trained buried mine detection; Detectors; Eigenvalues and eigenfunctions; Parameter estimation; Radar detection; Signal detection; Singular value decomposition; Statistical distributions; Stochastic processes; Testing; Training data; 65; Automatic target recognition; SAR; buried mines; deflection; detection; principal components; synthetic aperture radar; training;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2004.834591
Filename :
1356069
Link To Document :
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