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ICASSP
2007
IEEE

Robust Matched Filters for Target Detection in Hyperspectral Imaging Data

13 years 8 months ago
Robust Matched Filters for Target Detection in Hyperspectral Imaging Data
Most detection algorithms for hyperspectral imaging applications assume a target with a perfectly known spectral signature. In practice, the target signature is either imperfectly measured (target mismatch) and/or it exhibits spectral variability. The objective of this paper is to introduce a robust matched lter that takes the uncertainty and/or variability of target signatures into account. It is shown that, if we describe this uncertainty with an ellipsoid in the spectral space, we can design a matched lter that provides a response of the same magnitude for all spectra within this ellipsoid. Thus, by changing the size of this ellipsoid, we can control the "spectral selectivity" of the matched lter. The ability of the robust matched lter to deal effectively with target mismatch and spectral variability is demonstrated with hyperspectral imaging data from the HYDICE sensor.
Dimitris Manolakis, Ronald Lockwood, Thomas Cooley
Added 16 Aug 2010
Updated 16 Aug 2010
Type Conference
Year 2007
Where ICASSP
Authors Dimitris Manolakis, Ronald Lockwood, Thomas Cooley, John Jacobson
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