Local Matrix Feature-Based Kernel Joint Sparse Representation for Hyperspectral Image Classification

Hyperspectral image (HSI) classification is one of the hot research topics in the field of remote sensing. The performance of HSI classification greatly depends on the effectiveness of feature learning or feature design. Traditional vector-based spectral–spatial features have shown good performance...

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發表在:Remote Sensing
Main Authors: Xiang Chen, Na Chen, Jiangtao Peng, Weiwei Sun
格式: Article
語言:英语
出版: MDPI AG 2022-09-01
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在線閱讀:https://www.mdpi.com/2072-4292/14/17/4363
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author Xiang Chen
Na Chen
Jiangtao Peng
Weiwei Sun
author_facet Xiang Chen
Na Chen
Jiangtao Peng
Weiwei Sun
author_sort Xiang Chen
collection DOAJ
container_title Remote Sensing
description Hyperspectral image (HSI) classification is one of the hot research topics in the field of remote sensing. The performance of HSI classification greatly depends on the effectiveness of feature learning or feature design. Traditional vector-based spectral–spatial features have shown good performance in HSI classification. However, when the number of labeled samples is limited, the performance of these vector-based features is degraded. To fully mine the discriminative features in small-sample case, a novel local matrix feature (LMF) was designed to reflect both the correlation between spectral pixels and the spectral bands in a local spatial neighborhood. In particular, the LMF is a linear combination of a local covariance matrix feature and a local correntropy matrix feature, where the former describes the correlation between spectral pixels and the latter measures the similarity between spectral bands. Based on the constructed LMFs, a simple Log-Euclidean distance-based linear kernel is introduced to measure the similarity between them, and an LMF-based kernel joint sparse representation (LMFKJSR) model is proposed for HSI classification. Due to the superior performance of region covariance and correntropy descriptors, the proposed LMFKJSR shows better results than existing vector-feature-based and matrix-feature-based support vector machine (SVM) and JSR methods on three well-known HSI data sets in the case of limited labeled samples.
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spelling doaj-art-cdb3fbeb297a4ef28f68e9f7ffcefc7f2025-08-20T00:03:46ZengMDPI AGRemote Sensing2072-42922022-09-011417436310.3390/rs14174363Local Matrix Feature-Based Kernel Joint Sparse Representation for Hyperspectral Image ClassificationXiang Chen0Na Chen1Jiangtao Peng2Weiwei Sun3School of Mathematics and Statistics, Hubei University of Science and Technology, Xianning 437099, ChinaHubei Key Laboratory of Applied Mathematics, Faculty of Mathematics and Statistics, Hubei University, Wuhan 430062, ChinaHubei Key Laboratory of Applied Mathematics, Faculty of Mathematics and Statistics, Hubei University, Wuhan 430062, ChinaDepartment of Geography and Spatial Information Techniques, Ningbo University, Ningbo 315211, ChinaHyperspectral image (HSI) classification is one of the hot research topics in the field of remote sensing. The performance of HSI classification greatly depends on the effectiveness of feature learning or feature design. Traditional vector-based spectral–spatial features have shown good performance in HSI classification. However, when the number of labeled samples is limited, the performance of these vector-based features is degraded. To fully mine the discriminative features in small-sample case, a novel local matrix feature (LMF) was designed to reflect both the correlation between spectral pixels and the spectral bands in a local spatial neighborhood. In particular, the LMF is a linear combination of a local covariance matrix feature and a local correntropy matrix feature, where the former describes the correlation between spectral pixels and the latter measures the similarity between spectral bands. Based on the constructed LMFs, a simple Log-Euclidean distance-based linear kernel is introduced to measure the similarity between them, and an LMF-based kernel joint sparse representation (LMFKJSR) model is proposed for HSI classification. Due to the superior performance of region covariance and correntropy descriptors, the proposed LMFKJSR shows better results than existing vector-feature-based and matrix-feature-based support vector machine (SVM) and JSR methods on three well-known HSI data sets in the case of limited labeled samples.https://www.mdpi.com/2072-4292/14/17/4363hyperspectral image classificationjoint sparse representationcovariancecorrentropy
spellingShingle Xiang Chen
Na Chen
Jiangtao Peng
Weiwei Sun
Local Matrix Feature-Based Kernel Joint Sparse Representation for Hyperspectral Image Classification
hyperspectral image classification
joint sparse representation
covariance
correntropy
title Local Matrix Feature-Based Kernel Joint Sparse Representation for Hyperspectral Image Classification
title_full Local Matrix Feature-Based Kernel Joint Sparse Representation for Hyperspectral Image Classification
title_fullStr Local Matrix Feature-Based Kernel Joint Sparse Representation for Hyperspectral Image Classification
title_full_unstemmed Local Matrix Feature-Based Kernel Joint Sparse Representation for Hyperspectral Image Classification
title_short Local Matrix Feature-Based Kernel Joint Sparse Representation for Hyperspectral Image Classification
title_sort local matrix feature based kernel joint sparse representation for hyperspectral image classification
topic hyperspectral image classification
joint sparse representation
covariance
correntropy
url https://www.mdpi.com/2072-4292/14/17/4363
work_keys_str_mv AT xiangchen localmatrixfeaturebasedkerneljointsparserepresentationforhyperspectralimageclassification
AT nachen localmatrixfeaturebasedkerneljointsparserepresentationforhyperspectralimageclassification
AT jiangtaopeng localmatrixfeaturebasedkerneljointsparserepresentationforhyperspectralimageclassification
AT weiweisun localmatrixfeaturebasedkerneljointsparserepresentationforhyperspectralimageclassification