DocumentCode
1051136
Title
A support vector method for anomaly detection in hyperspectral imagery
Author
Banerjee, Amit ; Burlina, Philippe ; Diehl, Chris
Author_Institution
Appl. Phys. Lab., Johns Hopkins Univ., Laurel, MD
Volume
44
Issue
8
fYear
2006
Firstpage
2282
Lastpage
2291
Abstract
This paper presents a method for anomaly detection in hyperspectral images based on the support vector data description (SVDD), a kernel method for modeling the support of a distribution. Conventional anomaly-detection algorithms are based upon the popular Reed-Xiaoli detector. However, these algorithms typically suffer from large numbers of false alarms due to the assumptions that the local background is Gaussian and homogeneous. In practice, these assumptions are often violated, especially when the neighborhood of a pixel contains multiple types of terrain. To remove these assumptions, a novel anomaly detector that incorporates a nonparametric background model based on the SVDD is derived. Expanding on prior SVDD work, a geometric interpretation of the SVDD is used to propose a decision rule that utilizes a new test statistic and shares some of the properties of constant false-alarm rate detectors. Using receiver operating characteristic curves, the authors report results that demonstrate the improved performance and reduction in the false-alarm rate when using the SVDD-based detector on wide-area airborne mine detection (WAAMD) and hyperspectral digital imagery collection experiment (HYDICE) imagery
Keywords
geophysical techniques; geophysics computing; multidimensional signal processing; remote sensing; support vector machines; HYDICE imagery; Reed-Xiaoli detector; SVDD-based detector; WAAMD; anomaly detection; decision rule; false-alarm rate detector; hyperspectral digital imagery collection experiment; hyperspectral imagery; kernel method; nonparametric background model; support vector data description; target detection; wide-area airborne mine detection; Detectors; Hyperspectral imaging; Hyperspectral sensors; Image converters; Kernel; Layout; Object detection; Reflectivity; Shape; Testing; Hyperspectral; support vector data description; target detection;
fLanguage
English
Journal_Title
Geoscience and Remote Sensing, IEEE Transactions on
Publisher
ieee
ISSN
0196-2892
Type
jour
DOI
10.1109/TGRS.2006.873019
Filename
1661816
Link To Document