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Keywords
(17)
Automatic Target Recognition
Covariance Matrix
hyperspectral imagery
Indexing Terms
Markov Process
Matched Filter
Object Detection
Pattern Recognition
Receiver Operating Characteristic Curve
Signal To Noise Ratio
Support Vector Data Description
Support Vector Machine
Target Detection
First Order
False Positive Rate
Markov Model
True Positive
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An SVDD-Based Algorithm for Target Detection in Hyperspectral Imagery
An SVDD-Based Algorithm for Target Detection in Hyperspectral Imagery,10.1109/LGRS.2010.2078795,IEEE Geoscience and Remote Sensing Letters,Wesam Sakla
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An SVDD-Based Algorithm for Target Detection in Hyperspectral Imagery
(
Citations: 1
)
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Wesam Sakla
,
Andrew Chan
,
Jim Ji
,
Adel Sakla
Spectral variability remains a challenging problem for
target detection
and classification in hyperspectral (HS) im- agery. In this letter, we have applied the nonlinear
support vector data description
(SVDD) to perform full-pixel target detection. Using a pure target signature and a first-order Markov model, we have developed a novel
pattern recognition
algorithm to train an SVDD to characterize the target class. We have inserted target signatures into an urban HS scene with varying levels of spectral variability to explore the performance of the proposed SVDD target detector in different scenarios. The proposed approach makes no assumptions regarding the underlying distribution of the scene data as do traditional stochastic detectors such as the
matched filter
(MF). Detection results in the form of confusion ma- trices, and receiver-operating-characteristic curves demonstrate that the proposed SVDD-based algorithm is highly accurate and yields higher
true positive
rates and lower
false positive
rates than the MF. Index Terms—Automatic
target recognition
(ATR), hyperspec- tral imagery,
support vector data description
(SVDD), target detection.
Journal:
IEEE Geoscience and Remote Sensing Letters - IEEE GEOSCI REMOTE SENS LETT
, vol. 8, no. 2, pp. 384-388, 2011
DOI:
10.1109/LGRS.2010.2078795
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Citation Context
(1)
...It can tolerate spectral variation, which leads to heterogeneous spectra within homogeneous object [
7
]...
Xiao Fan
,
et al.
A robust spectral target recognition method for hyperspectral data bas...
References
(17)
A fuzzy hyperspectral classifier for automatic target recognition (ATR) systems
(
Citations: 18
)
Sameh M. Yamany
,
Aly A. Farag
,
Shin-yi Hsu
Journal:
Pattern Recognition Letters - PRL
, vol. 20, no. 11-13, pp. 1431-1438, 1999
Detection algorithms for hyperspectral imaging applications
(
Citations: 160
)
D. Manolakis
,
G. Shaw
Journal:
IEEE Signal Processing Magazine - IEEE SIGNAL PROCESS MAG
, vol. 19, no. 1, pp. 29-43, 2002
Hyperspectral Image Processing for Automatic Target Detection Applications
(
Citations: 46
)
Dimitris Manolakis
,
David Marden
,
Gary A. Shaw
Published in 2003.
Spectral Imaging for Remote Sensing
(
Citations: 31
)
Gary A. Shaw
,
Hsiao-hua K. Burke
Published in 2003.
A New Approach to the BHEP Tests for Multivariate Normality
(
Citations: 49
)
Norbert Henze
,
Thorsten Wagner
Journal:
Journal of Multivariate Analysis - MA
, 1997
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Citations
(1)
A robust spectral target recognition method for hyperspectral data based on combined spectral signatures
Xiao Fan
,
Ye Zhang
,
Feng Li
,
Yushi Chen
,
Tao Shao
,
Shuang Zhou
Conference:
Geoscience and Remote Sensing IEEE International Symposium - IGARSS
, pp. 4328-4331, 2011