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Extended Averaged Learning Subspace Method for Hyperspectral Data Classification

Averaged learning subspace methods (ALSM) have the advantage of being easily implemented and appear to outperform in classification problems of hyperspectral images. However, there remain some open and challenging problems, which if addressed, could further improve their performance in terms of clas...

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Autores principales: Bagan, Hasi, Takeuchi, Wataru, Yamagata, Yoshiki, Wang, Xiaohui, Yasuoka, Yoshifumi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Molecular Diversity Preservation International (MDPI) 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3291909/
https://www.ncbi.nlm.nih.gov/pubmed/22408524
http://dx.doi.org/10.3390/s90604247
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author Bagan, Hasi
Takeuchi, Wataru
Yamagata, Yoshiki
Wang, Xiaohui
Yasuoka, Yoshifumi
author_facet Bagan, Hasi
Takeuchi, Wataru
Yamagata, Yoshiki
Wang, Xiaohui
Yasuoka, Yoshifumi
author_sort Bagan, Hasi
collection PubMed
description Averaged learning subspace methods (ALSM) have the advantage of being easily implemented and appear to outperform in classification problems of hyperspectral images. However, there remain some open and challenging problems, which if addressed, could further improve their performance in terms of classification accuracy. We carried out experiments mainly by using two kinds of improved subspace methods (namely, dynamic and fixed subspace methods), in conjunction with the [0,1] and [-1,+1] normalization methods. We used different performance indicators to support our experimental studies: classification accuracy, computation time, and the stability of the parameter settings. Results are presented for the AVIRIS Indian Pines data set. Experimental analysis showed that the fixed subspace method combined with the [0,1] normalization method yielded higher classification accuracy than other subspace methods. Moreover, ALSMs are easily applied: only two parameters need to be set, and they can be applied directly to hyperspectral data. In addition, they can completely identify training samples in a finite number of iterations.
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spelling pubmed-32919092012-03-09 Extended Averaged Learning Subspace Method for Hyperspectral Data Classification Bagan, Hasi Takeuchi, Wataru Yamagata, Yoshiki Wang, Xiaohui Yasuoka, Yoshifumi Sensors (Basel) Article Averaged learning subspace methods (ALSM) have the advantage of being easily implemented and appear to outperform in classification problems of hyperspectral images. However, there remain some open and challenging problems, which if addressed, could further improve their performance in terms of classification accuracy. We carried out experiments mainly by using two kinds of improved subspace methods (namely, dynamic and fixed subspace methods), in conjunction with the [0,1] and [-1,+1] normalization methods. We used different performance indicators to support our experimental studies: classification accuracy, computation time, and the stability of the parameter settings. Results are presented for the AVIRIS Indian Pines data set. Experimental analysis showed that the fixed subspace method combined with the [0,1] normalization method yielded higher classification accuracy than other subspace methods. Moreover, ALSMs are easily applied: only two parameters need to be set, and they can be applied directly to hyperspectral data. In addition, they can completely identify training samples in a finite number of iterations. Molecular Diversity Preservation International (MDPI) 2009-06-03 /pmc/articles/PMC3291909/ /pubmed/22408524 http://dx.doi.org/10.3390/s90604247 Text en © 2009 by the authors; licensee Molecular Diversity Preservation International, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/).
spellingShingle Article
Bagan, Hasi
Takeuchi, Wataru
Yamagata, Yoshiki
Wang, Xiaohui
Yasuoka, Yoshifumi
Extended Averaged Learning Subspace Method for Hyperspectral Data Classification
title Extended Averaged Learning Subspace Method for Hyperspectral Data Classification
title_full Extended Averaged Learning Subspace Method for Hyperspectral Data Classification
title_fullStr Extended Averaged Learning Subspace Method for Hyperspectral Data Classification
title_full_unstemmed Extended Averaged Learning Subspace Method for Hyperspectral Data Classification
title_short Extended Averaged Learning Subspace Method for Hyperspectral Data Classification
title_sort extended averaged learning subspace method for hyperspectral data classification
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3291909/
https://www.ncbi.nlm.nih.gov/pubmed/22408524
http://dx.doi.org/10.3390/s90604247
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