Cargando…

SLIC Superpixel-Based l(2,1)-Norm Robust Principal Component Analysis for Hyperspectral Image Classification

Hyperspectral Images (HSIs) contain enriched information due to the presence of various bands, which have gained attention for the past few decades. However, explosive growth in HSIs’ scale and dimensions causes “Curse of dimensionality” and “Hughes phenomenon”. Dimensionality reduction has become a...

Descripción completa

Detalles Bibliográficos
Autores principales: Zu, Baokai, Xia, Kewen, Li, Tiejun, He, Ziping, Li, Yafang, Hou, Jingzhong, Du, Wei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6386951/
https://www.ncbi.nlm.nih.gov/pubmed/30682823
http://dx.doi.org/10.3390/s19030479
_version_ 1783397460942520320
author Zu, Baokai
Xia, Kewen
Li, Tiejun
He, Ziping
Li, Yafang
Hou, Jingzhong
Du, Wei
author_facet Zu, Baokai
Xia, Kewen
Li, Tiejun
He, Ziping
Li, Yafang
Hou, Jingzhong
Du, Wei
author_sort Zu, Baokai
collection PubMed
description Hyperspectral Images (HSIs) contain enriched information due to the presence of various bands, which have gained attention for the past few decades. However, explosive growth in HSIs’ scale and dimensions causes “Curse of dimensionality” and “Hughes phenomenon”. Dimensionality reduction has become an important means to overcome the “Curse of dimensionality”. In hyperspectral images, labeled samples are more difficult to collect because they require many labor and material resources. Semi-supervised dimensionality reduction is very important in mining high-dimensional data due to the lack of costly-labeled samples. The promotion of the supervised dimensionality reduction method to the semi-supervised method is mostly done by graph, which is a powerful tool for characterizing data relationships and manifold exploration. To take advantage of the spatial information of data, we put forward a novel graph construction method for semi-supervised learning, called SLIC Superpixel-based [Formula: see text]-norm Robust Principal Component Analysis (SURPCA(2,1)), which integrates superpixel segmentation method Simple Linear Iterative Clustering (SLIC) into Low-rank Decomposition. First, the SLIC algorithm is adopted to obtain the spatial homogeneous regions of HSI. Then, the [Formula: see text]-norm RPCA is exploited in each superpixel area, which captures the global information of homogeneous regions and preserves spectral subspace segmentation of HSIs very well. Therefore, we have explored the spatial and spectral information of hyperspectral image simultaneously by combining superpixel segmentation with RPCA. Finally, a semi-supervised dimensionality reduction framework based on SURPCA(2,1) graph is used for feature extraction task. Extensive experiments on multiple HSIs showed that the proposed spectral-spatial SURPCA(2,1) is always comparable to other compared graphs with few labeled samples.
format Online
Article
Text
id pubmed-6386951
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-63869512019-02-26 SLIC Superpixel-Based l(2,1)-Norm Robust Principal Component Analysis for Hyperspectral Image Classification Zu, Baokai Xia, Kewen Li, Tiejun He, Ziping Li, Yafang Hou, Jingzhong Du, Wei Sensors (Basel) Article Hyperspectral Images (HSIs) contain enriched information due to the presence of various bands, which have gained attention for the past few decades. However, explosive growth in HSIs’ scale and dimensions causes “Curse of dimensionality” and “Hughes phenomenon”. Dimensionality reduction has become an important means to overcome the “Curse of dimensionality”. In hyperspectral images, labeled samples are more difficult to collect because they require many labor and material resources. Semi-supervised dimensionality reduction is very important in mining high-dimensional data due to the lack of costly-labeled samples. The promotion of the supervised dimensionality reduction method to the semi-supervised method is mostly done by graph, which is a powerful tool for characterizing data relationships and manifold exploration. To take advantage of the spatial information of data, we put forward a novel graph construction method for semi-supervised learning, called SLIC Superpixel-based [Formula: see text]-norm Robust Principal Component Analysis (SURPCA(2,1)), which integrates superpixel segmentation method Simple Linear Iterative Clustering (SLIC) into Low-rank Decomposition. First, the SLIC algorithm is adopted to obtain the spatial homogeneous regions of HSI. Then, the [Formula: see text]-norm RPCA is exploited in each superpixel area, which captures the global information of homogeneous regions and preserves spectral subspace segmentation of HSIs very well. Therefore, we have explored the spatial and spectral information of hyperspectral image simultaneously by combining superpixel segmentation with RPCA. Finally, a semi-supervised dimensionality reduction framework based on SURPCA(2,1) graph is used for feature extraction task. Extensive experiments on multiple HSIs showed that the proposed spectral-spatial SURPCA(2,1) is always comparable to other compared graphs with few labeled samples. MDPI 2019-01-24 /pmc/articles/PMC6386951/ /pubmed/30682823 http://dx.doi.org/10.3390/s19030479 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Zu, Baokai
Xia, Kewen
Li, Tiejun
He, Ziping
Li, Yafang
Hou, Jingzhong
Du, Wei
SLIC Superpixel-Based l(2,1)-Norm Robust Principal Component Analysis for Hyperspectral Image Classification
title SLIC Superpixel-Based l(2,1)-Norm Robust Principal Component Analysis for Hyperspectral Image Classification
title_full SLIC Superpixel-Based l(2,1)-Norm Robust Principal Component Analysis for Hyperspectral Image Classification
title_fullStr SLIC Superpixel-Based l(2,1)-Norm Robust Principal Component Analysis for Hyperspectral Image Classification
title_full_unstemmed SLIC Superpixel-Based l(2,1)-Norm Robust Principal Component Analysis for Hyperspectral Image Classification
title_short SLIC Superpixel-Based l(2,1)-Norm Robust Principal Component Analysis for Hyperspectral Image Classification
title_sort slic superpixel-based l(2,1)-norm robust principal component analysis for hyperspectral image classification
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6386951/
https://www.ncbi.nlm.nih.gov/pubmed/30682823
http://dx.doi.org/10.3390/s19030479
work_keys_str_mv AT zubaokai slicsuperpixelbasedl21normrobustprincipalcomponentanalysisforhyperspectralimageclassification
AT xiakewen slicsuperpixelbasedl21normrobustprincipalcomponentanalysisforhyperspectralimageclassification
AT litiejun slicsuperpixelbasedl21normrobustprincipalcomponentanalysisforhyperspectralimageclassification
AT heziping slicsuperpixelbasedl21normrobustprincipalcomponentanalysisforhyperspectralimageclassification
AT liyafang slicsuperpixelbasedl21normrobustprincipalcomponentanalysisforhyperspectralimageclassification
AT houjingzhong slicsuperpixelbasedl21normrobustprincipalcomponentanalysisforhyperspectralimageclassification
AT duwei slicsuperpixelbasedl21normrobustprincipalcomponentanalysisforhyperspectralimageclassification