Semi-Supervised Classification for Hyperspectral Images Based on Multiple Classifiers and Relaxation Strategy

Hyperspectral image (HSI) classification is a fundamental and challenging problem in remote sensing and its various applications. However, it is difficult to perfectly classify remotely sensed hyperspectral data by directly using classification techniques developed in pattern recognition. This is pa...

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Main Authors: Fuding Xie, Dongcui Hu, Fangfei Li, Jun Yang, Deshan Liu
Format: Article
Language:English
Published: MDPI AG 2018-07-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:http://www.mdpi.com/2220-9964/7/7/284
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spelling doaj-bedd783bc024487997a089eab245f0392020-11-25T00:08:19ZengMDPI AGISPRS International Journal of Geo-Information2220-99642018-07-017728410.3390/ijgi7070284ijgi7070284Semi-Supervised Classification for Hyperspectral Images Based on Multiple Classifiers and Relaxation StrategyFuding Xie0Dongcui Hu1Fangfei Li2Jun Yang3Deshan Liu4College of Urban and Environment, Liaoning Normal University, Dalian 116029, ChinaCollege of Urban and Environment, Liaoning Normal University, Dalian 116029, ChinaCollege of Urban and Environment, Liaoning Normal University, Dalian 116029, ChinaCollege of Urban and Environment, Liaoning Normal University, Dalian 116029, ChinaCollege of Computer Science, Liaoning Normal University, Dalian 116081, ChinaHyperspectral image (HSI) classification is a fundamental and challenging problem in remote sensing and its various applications. However, it is difficult to perfectly classify remotely sensed hyperspectral data by directly using classification techniques developed in pattern recognition. This is partially owing to a multitude of noise points and the limited training samples. Based on multinomial logistic regression (MLR), the local mean-based pseudo nearest neighbor (LMPNN) rule, and the discontinuity preserving relaxation (DPR) method, in this paper, a semi-supervised method for HSI classification is proposed. In pre-processing and post-processing, the DPR strategy is adopted to denoise the original hyperspectral data and improve the classification accuracy, respectively. The application of two classifiers, MLR and LMPNN, can automatically acquire more labeled samples in terms of a few labeled instances per class. This is termed the pre-classification procedure. The final classification result of the HSI is obtained by employing the MLRsub approach. The effectiveness of the proposal is experimentally evaluated by two real hyperspectral datasets, which are widely used to test the performance of the HSI classification algorithm. The comparison results using several competing methods confirm that the proposed method is effective, even for limited training samples.http://www.mdpi.com/2220-9964/7/7/284hyperspectral imagesemi-supervised classificationmultinomial logistic regressionlocal mean-based pseudo nearest neighbordiscontinuity preserving relaxation
collection DOAJ
language English
format Article
sources DOAJ
author Fuding Xie
Dongcui Hu
Fangfei Li
Jun Yang
Deshan Liu
spellingShingle Fuding Xie
Dongcui Hu
Fangfei Li
Jun Yang
Deshan Liu
Semi-Supervised Classification for Hyperspectral Images Based on Multiple Classifiers and Relaxation Strategy
ISPRS International Journal of Geo-Information
hyperspectral image
semi-supervised classification
multinomial logistic regression
local mean-based pseudo nearest neighbor
discontinuity preserving relaxation
author_facet Fuding Xie
Dongcui Hu
Fangfei Li
Jun Yang
Deshan Liu
author_sort Fuding Xie
title Semi-Supervised Classification for Hyperspectral Images Based on Multiple Classifiers and Relaxation Strategy
title_short Semi-Supervised Classification for Hyperspectral Images Based on Multiple Classifiers and Relaxation Strategy
title_full Semi-Supervised Classification for Hyperspectral Images Based on Multiple Classifiers and Relaxation Strategy
title_fullStr Semi-Supervised Classification for Hyperspectral Images Based on Multiple Classifiers and Relaxation Strategy
title_full_unstemmed Semi-Supervised Classification for Hyperspectral Images Based on Multiple Classifiers and Relaxation Strategy
title_sort semi-supervised classification for hyperspectral images based on multiple classifiers and relaxation strategy
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2018-07-01
description Hyperspectral image (HSI) classification is a fundamental and challenging problem in remote sensing and its various applications. However, it is difficult to perfectly classify remotely sensed hyperspectral data by directly using classification techniques developed in pattern recognition. This is partially owing to a multitude of noise points and the limited training samples. Based on multinomial logistic regression (MLR), the local mean-based pseudo nearest neighbor (LMPNN) rule, and the discontinuity preserving relaxation (DPR) method, in this paper, a semi-supervised method for HSI classification is proposed. In pre-processing and post-processing, the DPR strategy is adopted to denoise the original hyperspectral data and improve the classification accuracy, respectively. The application of two classifiers, MLR and LMPNN, can automatically acquire more labeled samples in terms of a few labeled instances per class. This is termed the pre-classification procedure. The final classification result of the HSI is obtained by employing the MLRsub approach. The effectiveness of the proposal is experimentally evaluated by two real hyperspectral datasets, which are widely used to test the performance of the HSI classification algorithm. The comparison results using several competing methods confirm that the proposed method is effective, even for limited training samples.
topic hyperspectral image
semi-supervised classification
multinomial logistic regression
local mean-based pseudo nearest neighbor
discontinuity preserving relaxation
url http://www.mdpi.com/2220-9964/7/7/284
work_keys_str_mv AT fudingxie semisupervisedclassificationforhyperspectralimagesbasedonmultipleclassifiersandrelaxationstrategy
AT dongcuihu semisupervisedclassificationforhyperspectralimagesbasedonmultipleclassifiersandrelaxationstrategy
AT fangfeili semisupervisedclassificationforhyperspectralimagesbasedonmultipleclassifiersandrelaxationstrategy
AT junyang semisupervisedclassificationforhyperspectralimagesbasedonmultipleclassifiersandrelaxationstrategy
AT deshanliu semisupervisedclassificationforhyperspectralimagesbasedonmultipleclassifiersandrelaxationstrategy
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