Statistical Analysis of Hyper-Spectral Data: A Non-Gaussian Approach

We investigate the statistical modeling of hyper-spectral data. The accurate modeling of experimental data is critical in target detection and classification applications. In fact, having a statistical model that is capable of properly describing data variability leads to the derivation of the best...

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Main Authors: M. Diani, G. Corsini, N. Acito
Format: Article
Language:English
Published: SpringerOpen 2007-01-01
Series:EURASIP Journal on Advances in Signal Processing
Online Access:http://dx.doi.org/10.1155/2007/27673
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spelling doaj-4333eb10774e43c5a0290c0925b5c2072020-11-25T01:05:28ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61721687-61802007-01-01200710.1155/2007/27673Statistical Analysis of Hyper-Spectral Data: A Non-Gaussian ApproachM. DianiG. CorsiniN. AcitoWe investigate the statistical modeling of hyper-spectral data. The accurate modeling of experimental data is critical in target detection and classification applications. In fact, having a statistical model that is capable of properly describing data variability leads to the derivation of the best decision strategies together with a reliable assessment of algorithm performance. Most existing classification and target detection algorithms are based on the multivariate Gaussian model which, in many cases, deviates from the true statistical behavior of hyper-spectral data. This motivated us to investigate the capability of non-Gaussian models to represent data variability in each background class. In particular, we refer to models based on elliptically contoured (EC) distributions. We consider multivariate EC-t distribution and two distinct mixture models based on EC distributions. We describe the methodology adopted for the statistical analysis and we propose a technique to automatically estimate the unknown parameters of statistical models. Finally, we discuss the results obtained by analyzing data gathered by the multispectral infrared and visible imaging spectrometer (MIVIS) sensor. http://dx.doi.org/10.1155/2007/27673
collection DOAJ
language English
format Article
sources DOAJ
author M. Diani
G. Corsini
N. Acito
spellingShingle M. Diani
G. Corsini
N. Acito
Statistical Analysis of Hyper-Spectral Data: A Non-Gaussian Approach
EURASIP Journal on Advances in Signal Processing
author_facet M. Diani
G. Corsini
N. Acito
author_sort M. Diani
title Statistical Analysis of Hyper-Spectral Data: A Non-Gaussian Approach
title_short Statistical Analysis of Hyper-Spectral Data: A Non-Gaussian Approach
title_full Statistical Analysis of Hyper-Spectral Data: A Non-Gaussian Approach
title_fullStr Statistical Analysis of Hyper-Spectral Data: A Non-Gaussian Approach
title_full_unstemmed Statistical Analysis of Hyper-Spectral Data: A Non-Gaussian Approach
title_sort statistical analysis of hyper-spectral data: a non-gaussian approach
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6172
1687-6180
publishDate 2007-01-01
description We investigate the statistical modeling of hyper-spectral data. The accurate modeling of experimental data is critical in target detection and classification applications. In fact, having a statistical model that is capable of properly describing data variability leads to the derivation of the best decision strategies together with a reliable assessment of algorithm performance. Most existing classification and target detection algorithms are based on the multivariate Gaussian model which, in many cases, deviates from the true statistical behavior of hyper-spectral data. This motivated us to investigate the capability of non-Gaussian models to represent data variability in each background class. In particular, we refer to models based on elliptically contoured (EC) distributions. We consider multivariate EC-t distribution and two distinct mixture models based on EC distributions. We describe the methodology adopted for the statistical analysis and we propose a technique to automatically estimate the unknown parameters of statistical models. Finally, we discuss the results obtained by analyzing data gathered by the multispectral infrared and visible imaging spectrometer (MIVIS) sensor.
url http://dx.doi.org/10.1155/2007/27673
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AT gcorsini statisticalanalysisofhyperspectraldataanongaussianapproach
AT nacito statisticalanalysisofhyperspectraldataanongaussianapproach
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