A Comparative Analysis of Kernel Subspace Target Detectors for Hyperspectral Imagery

<p/> <p>Several linear and nonlinear detection algorithms that are based on spectral matched (subspace) filters are compared. Nonlinear (<it>kernel</it>) versions of these spectral matched detectors are also given and their performance is compared with linear versions. Severa...

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Main Authors: Kwon Heesung, Nasrabadi Nasser M
Format: Article
Language:English
Published: SpringerOpen 2007-01-01
Series:EURASIP Journal on Advances in Signal Processing
Online Access:http://asp.eurasipjournals.com/content/2007/029250
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spelling doaj-20743b6f3a8e4b7dbfef5e37fa0740752020-11-24T22:06:42ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61721687-61802007-01-0120071029250A Comparative Analysis of Kernel Subspace Target Detectors for Hyperspectral ImageryKwon HeesungNasrabadi Nasser M<p/> <p>Several linear and nonlinear detection algorithms that are based on spectral matched (subspace) filters are compared. Nonlinear (<it>kernel</it>) versions of these spectral matched detectors are also given and their performance is compared with linear versions. Several well-known matched detectors such as matched subspace detector, orthogonal subspace detector, spectral matched filter, and adaptive subspace detector are extended to their corresponding kernel versions by using the idea of kernel-based learning theory. In kernel-based detection algorithms the data is assumed to be implicitly mapped into a high-dimensional kernel feature space by a nonlinear mapping, which is associated with a kernel function. The expression for each detection algorithm is then derived in the feature space, which is <it>kernelized</it> in terms of the kernel functions in order to avoid explicit computation in the high-dimensional feature space. Experimental results based on simulated toy examples and real hyperspectral imagery show that the kernel versions of these detectors outperform the conventional linear detectors.</p> http://asp.eurasipjournals.com/content/2007/029250
collection DOAJ
language English
format Article
sources DOAJ
author Kwon Heesung
Nasrabadi Nasser M
spellingShingle Kwon Heesung
Nasrabadi Nasser M
A Comparative Analysis of Kernel Subspace Target Detectors for Hyperspectral Imagery
EURASIP Journal on Advances in Signal Processing
author_facet Kwon Heesung
Nasrabadi Nasser M
author_sort Kwon Heesung
title A Comparative Analysis of Kernel Subspace Target Detectors for Hyperspectral Imagery
title_short A Comparative Analysis of Kernel Subspace Target Detectors for Hyperspectral Imagery
title_full A Comparative Analysis of Kernel Subspace Target Detectors for Hyperspectral Imagery
title_fullStr A Comparative Analysis of Kernel Subspace Target Detectors for Hyperspectral Imagery
title_full_unstemmed A Comparative Analysis of Kernel Subspace Target Detectors for Hyperspectral Imagery
title_sort comparative analysis of kernel subspace target detectors for hyperspectral imagery
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6172
1687-6180
publishDate 2007-01-01
description <p/> <p>Several linear and nonlinear detection algorithms that are based on spectral matched (subspace) filters are compared. Nonlinear (<it>kernel</it>) versions of these spectral matched detectors are also given and their performance is compared with linear versions. Several well-known matched detectors such as matched subspace detector, orthogonal subspace detector, spectral matched filter, and adaptive subspace detector are extended to their corresponding kernel versions by using the idea of kernel-based learning theory. In kernel-based detection algorithms the data is assumed to be implicitly mapped into a high-dimensional kernel feature space by a nonlinear mapping, which is associated with a kernel function. The expression for each detection algorithm is then derived in the feature space, which is <it>kernelized</it> in terms of the kernel functions in order to avoid explicit computation in the high-dimensional feature space. Experimental results based on simulated toy examples and real hyperspectral imagery show that the kernel versions of these detectors outperform the conventional linear detectors.</p>
url http://asp.eurasipjournals.com/content/2007/029250
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