Home  |   Login  |   Logout  |   Access Information  |   Alerts  |   Purchase History  |   Cart  |   Sitemap  |   Help   
 
CrossRef Search
BROWSE SEARCH IEEE XPLORE GUIDE SUPPORT
You requested this document:
1. Hyperspectral target detection using kernel matched subspace detector
Heesung Kwon; Nasrabadi, N.M.;
Image Processing, 2004. ICIP '04. 2004 International Conference on
Volume 5,  24-27 Oct. 2004 Page(s):3327 - 3330 Vol. 5
Abstract:

In this paper we present a nonlinear realization of a subspace signal detection approach based on the generalized likelihood ratio test (GLRT) - so called matched subspace detectors (MSD). The linear model for MSD is first extended to a high, possibly infinite, dimensional feature space and then the corresponding nonlinear GLRT expression is obtained. In order to address the intractability of the GLRT in the nonlinear feature space we kernelize the nonlinear GLRT using kernel eigenvector representations as well as the kernel trick where dot products in the nonlinear feature space are implicitly computed by kernels. The proposed kernel-based nonlinear detector, so called kernel matched subspace detector (KMSD), is applied to a given hyperspectral imagery - HYDICE (hyperspectral digital imagery collection experiment) images - to detect targets of interest. KMSD showed superior detection performance over MSD for the HYDICE images tested in this paper.
Abstract | Full Text: PDF(677 KB)    IEEE CNF
 
» Key
IEEE JNL IEEE Journal or Magazine
IEE JNL IEE Journal or Magazine
IEEE CNF IEEE Conference Proceeding
IEE CNF IEE Conference Proceeding
IEEE STD IEEE Standard
 
 
Indexed by IEE Inspec
© Copyright 2008 IEEE – All Rights Reserved