FEATURE EXTRACTION FOR LANDMINE DETECTION IN UWB SAR VIA SWD AND ISOMAP
Author(s) -
Jun Lou,
Jin Tian,
Zhimin Zhou
Publication year - 2013
Publication title -
electromagnetic waves
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.437
H-Index - 89
eISSN - 1559-8985
pISSN - 1070-4698
DOI - 10.2528/pier12121301
Subject(s) - isomap , feature extraction , computer science , artificial intelligence , pattern recognition (psychology) , feature (linguistics) , extraction (chemistry) , remote sensing , geography , nonlinear dimensionality reduction , dimensionality reduction , linguistics , philosophy , chemistry , chromatography
Ultra-wideband synthetic aperture radar (UWB SAR) is a su-cient approach to detect landmines over large areas from a safe standofi distance. Feature extraction is the key step of landmine detection processing. On the one hand, the feature vector should contain more scattering characteristics to discriminate landmines from clutters; on the other hand, the dimensionality of feature vector should be lower to avoid the \curse of dimensionality". In this paper, a novel feature vector extraction method is proposed. We flrst obtain the scattering characteristics in four domains, i.e., range, azimuth, frequency and aspect-angle, via the space-wavenumber distribution (SWD). Since the data after SWD are with higher dimension and local nonlinear structures, a typical manifold learning method, Isomap, is used to reduce the dimension. The validity of the proposed method is proved by using the real data collected by an airship-borne UWB SAR system.
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