A Bayesian MRF Framework for Labeling Terrain Using Hyperspectral Imaging

We explore the non-Gaussianity of hyperspectral data and present probability models that capture variability of hyperspectral images. In particular, we present a nonparametric probability distribution that models the distribution of the hyperspectral data after reducing the dimension of the data via...

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Other Authors: Neher, Robert E. (authoraut)
Format: Others
Language:English
English
Published: Florida State University
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Online Access:http://purl.flvc.org/fsu/fd/FSU_migr_etd-2691
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spelling ndltd-fsu.edu-oai-fsu.digital.flvc.org-fsu_1809502020-06-09T03:08:38Z A Bayesian MRF Framework for Labeling Terrain Using Hyperspectral Imaging Neher, Robert E. (authoraut) Srivastava, Anuj (professor directing dissertation) Liu, Xiuwen (outside committee member) Huffer, Fred (committee member) Wegkamp, Marten (committee member) Department of Statistics (degree granting department) Florida State University (degree granting institution) Text text Florida State University Florida State University English eng 1 online resource computer application/pdf We explore the non-Gaussianity of hyperspectral data and present probability models that capture variability of hyperspectral images. In particular, we present a nonparametric probability distribution that models the distribution of the hyperspectral data after reducing the dimension of the data via either principal components or Fisher's discriminant analysis. We also explore the directional differences in observed images and present two parametric distributions, the generalized Laplacian and the Bessel K form, that well model the non-Gaussian behavior of the directional differences. We then propose a model that labels each spatial site, using Bayesian inference and Markov random fields, that incorporates the information of the non-parametric distribution of the data, and the parametric distributions of the directional differences, along with a prior distribution that favors smooth labeling. We then test our model on actual hyperspectral data and present the results of our model, using the Washington D.C. Mall and Indian Springs rural area data sets. A Dissertation submitted to the Department of Statistics in partial fulfillment of the requirements for the degree of Doctor of Philosophy. Fall Semester, 2004. August 27, 2004. Hyperspectral, Bayesian, Labeling, Gibbs Random Fields, Markov Random Fields Includes bibliographical references. Anuj Srivastava, Professor Directing Dissertation; Xiuwen Liu, Outside Committee Member; Fred Huffer, Committee Member; Marten Wegkamp, Committee Member. Statistics Probabilities FSU_migr_etd-2691 http://purl.flvc.org/fsu/fd/FSU_migr_etd-2691 This Item is protected by copyright and/or related rights. You are free to use this Item in any way that is permitted by the copyright and related rights legislation that applies to your use. For other uses you need to obtain permission from the rights-holder(s). The copyright in theses and dissertations completed at Florida State University is held by the students who author them. http://diginole.lib.fsu.edu/islandora/object/fsu%3A180950/datastream/TN/view/Bayesian%20MRF%20Framework%20for%20Labeling%20Terrain%20Using%20Hyperspectral%20Imaging.jpg
collection NDLTD
language English
English
format Others
sources NDLTD
topic Statistics
Probabilities
spellingShingle Statistics
Probabilities
A Bayesian MRF Framework for Labeling Terrain Using Hyperspectral Imaging
description We explore the non-Gaussianity of hyperspectral data and present probability models that capture variability of hyperspectral images. In particular, we present a nonparametric probability distribution that models the distribution of the hyperspectral data after reducing the dimension of the data via either principal components or Fisher's discriminant analysis. We also explore the directional differences in observed images and present two parametric distributions, the generalized Laplacian and the Bessel K form, that well model the non-Gaussian behavior of the directional differences. We then propose a model that labels each spatial site, using Bayesian inference and Markov random fields, that incorporates the information of the non-parametric distribution of the data, and the parametric distributions of the directional differences, along with a prior distribution that favors smooth labeling. We then test our model on actual hyperspectral data and present the results of our model, using the Washington D.C. Mall and Indian Springs rural area data sets. === A Dissertation submitted to the Department of Statistics in partial fulfillment of the requirements for the degree of Doctor of Philosophy. === Fall Semester, 2004. === August 27, 2004. === Hyperspectral, Bayesian, Labeling, Gibbs Random Fields, Markov Random Fields === Includes bibliographical references. === Anuj Srivastava, Professor Directing Dissertation; Xiuwen Liu, Outside Committee Member; Fred Huffer, Committee Member; Marten Wegkamp, Committee Member.
author2 Neher, Robert E. (authoraut)
author_facet Neher, Robert E. (authoraut)
title A Bayesian MRF Framework for Labeling Terrain Using Hyperspectral Imaging
title_short A Bayesian MRF Framework for Labeling Terrain Using Hyperspectral Imaging
title_full A Bayesian MRF Framework for Labeling Terrain Using Hyperspectral Imaging
title_fullStr A Bayesian MRF Framework for Labeling Terrain Using Hyperspectral Imaging
title_full_unstemmed A Bayesian MRF Framework for Labeling Terrain Using Hyperspectral Imaging
title_sort bayesian mrf framework for labeling terrain using hyperspectral imaging
publisher Florida State University
url http://purl.flvc.org/fsu/fd/FSU_migr_etd-2691
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