A comparative analysis of classic Geometrical methods and sparse regression methods for linearly unmixing hyperspectral image data
A research report submitted to the Faculty of Science, University of Witwatersrand, Johannesburg, in the ful lment of the requirements for the degree of Masters of Science by Coursework and Research Report, 2019 === This research report presents an across-the-board comparative analysis on algorith...
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ndltd-netd.ac.za-oai-union.ndltd.org-wits-oai-wiredspace.wits.ac.za-10539-295422021-04-29T05:09:20Z A comparative analysis of classic Geometrical methods and sparse regression methods for linearly unmixing hyperspectral image data Nicolae, Aurel A research report submitted to the Faculty of Science, University of Witwatersrand, Johannesburg, in the ful lment of the requirements for the degree of Masters of Science by Coursework and Research Report, 2019 This research report presents an across-the-board comparative analysis on algorithms for linearly unmixing hyperspectral image data cubes. Convex geometry based endmember extraction algorithms (EEAs) such as the pixel purity index (PPI) algorithm and N-FINDR have been commonly used to derive the material spectral signatures called endmembers from the hyperspectral images. The estimation of their corresponding fractional abundances is done by solving the related inverse problem in a least squares sense. Semi-supervised sparse regression algorithms such as orthogonal matching pursuit (OMP) and sparse unmixing algorithm via variable splitting and augmented Lagrangian (SUnSAL) bypass the endmember extraction process by employing widely available spectral libraries a priori, automatically returning the fractional abundances and sparsity estimates. The main contribution of this work is to serve as a rich resource on hyperspectral image unmixing, providing end-to-end evaluation of a wide variety of algorithms using di erent arti cial data sets. XN2020 2020-09-08T06:47:11Z 2020-09-08T06:47:11Z 2019 Thesis https://hdl.handle.net/10539/29542 en application/pdf |
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language |
en |
format |
Others
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description |
A research report submitted to the Faculty of Science, University of
Witwatersrand, Johannesburg, in the ful lment of the requirements for
the degree of Masters of Science by Coursework and Research Report, 2019 === This research report presents an across-the-board comparative analysis on algorithms
for linearly unmixing hyperspectral image data cubes. Convex geometry
based endmember extraction algorithms (EEAs) such as the pixel purity index (PPI)
algorithm and N-FINDR have been commonly used to derive the material spectral
signatures called endmembers from the hyperspectral images. The estimation of
their corresponding fractional abundances is done by solving the related inverse
problem in a least squares sense. Semi-supervised sparse regression algorithms such
as orthogonal matching pursuit (OMP) and sparse unmixing algorithm via variable
splitting and augmented Lagrangian (SUnSAL) bypass the endmember extraction
process by employing widely available spectral libraries a priori, automatically returning
the fractional abundances and sparsity estimates.
The main contribution of this work is to serve as a rich resource on hyperspectral
image unmixing, providing end-to-end evaluation of a wide variety of algorithms
using di erent arti cial data sets. === XN2020 |
author |
Nicolae, Aurel |
spellingShingle |
Nicolae, Aurel A comparative analysis of classic Geometrical methods and sparse regression methods for linearly unmixing hyperspectral image data |
author_facet |
Nicolae, Aurel |
author_sort |
Nicolae, Aurel |
title |
A comparative analysis of classic Geometrical methods and sparse regression methods for linearly unmixing hyperspectral image data |
title_short |
A comparative analysis of classic Geometrical methods and sparse regression methods for linearly unmixing hyperspectral image data |
title_full |
A comparative analysis of classic Geometrical methods and sparse regression methods for linearly unmixing hyperspectral image data |
title_fullStr |
A comparative analysis of classic Geometrical methods and sparse regression methods for linearly unmixing hyperspectral image data |
title_full_unstemmed |
A comparative analysis of classic Geometrical methods and sparse regression methods for linearly unmixing hyperspectral image data |
title_sort |
comparative analysis of classic geometrical methods and sparse regression methods for linearly unmixing hyperspectral image data |
publishDate |
2020 |
url |
https://hdl.handle.net/10539/29542 |
work_keys_str_mv |
AT nicolaeaurel acomparativeanalysisofclassicgeometricalmethodsandsparseregressionmethodsforlinearlyunmixinghyperspectralimagedata AT nicolaeaurel comparativeanalysisofclassicgeometricalmethodsandsparseregressionmethodsforlinearlyunmixinghyperspectralimagedata |
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1719400452839178240 |