Hyperspectral Dimensionality Reduction Based on Multiscale Superpixelwise Kernel Principal Component Analysis
Dimensionality reduction (DR) is an important preprocessing step in hyperspectral image applications. In this paper, a superpixelwise kernel principal component analysis (SuperKPCA) method for DR that performs kernel principal component analysis (KPCA) on each homogeneous region is proposed to fully...
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doaj-434dd351a79f4d4297fb9fab0245527f2020-11-25T02:16:02ZengMDPI AGRemote Sensing2072-42922019-05-011110121910.3390/rs11101219rs11101219Hyperspectral Dimensionality Reduction Based on Multiscale Superpixelwise Kernel Principal Component AnalysisLan Zhang0Hongjun Su1Jingwei Shen2Chongqing Engineering Research Center for Remote Sensing Big Data Application, School of Geography Science, Southwest University, Chongqing 400715, ChinaSchool of Earth Sciences and Engineering, Hohai University, Nanjing 211100, ChinaChongqing Engineering Research Center for Remote Sensing Big Data Application, School of Geography Science, Southwest University, Chongqing 400715, ChinaDimensionality reduction (DR) is an important preprocessing step in hyperspectral image applications. In this paper, a superpixelwise kernel principal component analysis (SuperKPCA) method for DR that performs kernel principal component analysis (KPCA) on each homogeneous region is proposed to fully utilize the KPCA’s ability to acquire nonlinear features. Moreover, for the proposed method, the differences in the DR results obtained based on different fundamental images (the first principal components obtained by principal component analysis (PCA), KPCA, and minimum noise fraction (MNF)) are compared. Extensive experiments show that when 5, 10, 20, and 30 samples from each class are selected, for the Indian Pines, Pavia University, and Salinas datasets: (1) when the most suitable fundamental image is selected, the classification accuracy obtained by SuperKPCA can be increased by 0.06%−0.74%, 3.88%−4.37%, and 0.39%−4.85%, respectively, when compared with SuperPCA, which performs PCA on each homogeneous region; (2) the DR results obtained based on different first principal components are different and complementary. By fusing the multiscale classification results obtained based on different first principal components, the classification accuracy can be increased by 0.54%−2.68%, 0.12%−1.10%, and 0.01%−0.08%, respectively, when compared with the method based only on the most suitable fundamental image.https://www.mdpi.com/2072-4292/11/10/1219unsupervised dimensionality reductionsuperpixel segmentationkernel principal component analysis (KPCA)fundamental imagehyperspectral image (HSI) |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lan Zhang Hongjun Su Jingwei Shen |
spellingShingle |
Lan Zhang Hongjun Su Jingwei Shen Hyperspectral Dimensionality Reduction Based on Multiscale Superpixelwise Kernel Principal Component Analysis Remote Sensing unsupervised dimensionality reduction superpixel segmentation kernel principal component analysis (KPCA) fundamental image hyperspectral image (HSI) |
author_facet |
Lan Zhang Hongjun Su Jingwei Shen |
author_sort |
Lan Zhang |
title |
Hyperspectral Dimensionality Reduction Based on Multiscale Superpixelwise Kernel Principal Component Analysis |
title_short |
Hyperspectral Dimensionality Reduction Based on Multiscale Superpixelwise Kernel Principal Component Analysis |
title_full |
Hyperspectral Dimensionality Reduction Based on Multiscale Superpixelwise Kernel Principal Component Analysis |
title_fullStr |
Hyperspectral Dimensionality Reduction Based on Multiscale Superpixelwise Kernel Principal Component Analysis |
title_full_unstemmed |
Hyperspectral Dimensionality Reduction Based on Multiscale Superpixelwise Kernel Principal Component Analysis |
title_sort |
hyperspectral dimensionality reduction based on multiscale superpixelwise kernel principal component analysis |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2019-05-01 |
description |
Dimensionality reduction (DR) is an important preprocessing step in hyperspectral image applications. In this paper, a superpixelwise kernel principal component analysis (SuperKPCA) method for DR that performs kernel principal component analysis (KPCA) on each homogeneous region is proposed to fully utilize the KPCA’s ability to acquire nonlinear features. Moreover, for the proposed method, the differences in the DR results obtained based on different fundamental images (the first principal components obtained by principal component analysis (PCA), KPCA, and minimum noise fraction (MNF)) are compared. Extensive experiments show that when 5, 10, 20, and 30 samples from each class are selected, for the Indian Pines, Pavia University, and Salinas datasets: (1) when the most suitable fundamental image is selected, the classification accuracy obtained by SuperKPCA can be increased by 0.06%−0.74%, 3.88%−4.37%, and 0.39%−4.85%, respectively, when compared with SuperPCA, which performs PCA on each homogeneous region; (2) the DR results obtained based on different first principal components are different and complementary. By fusing the multiscale classification results obtained based on different first principal components, the classification accuracy can be increased by 0.54%−2.68%, 0.12%−1.10%, and 0.01%−0.08%, respectively, when compared with the method based only on the most suitable fundamental image. |
topic |
unsupervised dimensionality reduction superpixel segmentation kernel principal component analysis (KPCA) fundamental image hyperspectral image (HSI) |
url |
https://www.mdpi.com/2072-4292/11/10/1219 |
work_keys_str_mv |
AT lanzhang hyperspectraldimensionalityreductionbasedonmultiscalesuperpixelwisekernelprincipalcomponentanalysis AT hongjunsu hyperspectraldimensionalityreductionbasedonmultiscalesuperpixelwisekernelprincipalcomponentanalysis AT jingweishen hyperspectraldimensionalityreductionbasedonmultiscalesuperpixelwisekernelprincipalcomponentanalysis |
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