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Fusion of PCA and Segmented-PCA Domain Multiscale 2-D-SSA for Effective Spectral-Spatial Feature Extraction and Data Classification in Hyperspectral Imagery

Hang Fu, Genyun Sun, Jinchang Ren, Aizhu Zhang, Xiuping Jia

2020IEEE Transactions on Geoscience and Remote Sensing77 citationsDOIOpen Access PDF

Abstract

As hyperspectral imagery (HSI) contains rich spectral and spatial information, a novel principal component analysis (PCA) and segmented-PCA (SPCA)-based multiscale 2-D-singular spectrum analysis (2-D-SSA) fusion method is proposed for joint spectral–spatial HSI feature extraction and classification. Considering the overall spectra and adjacent band correlations of objects, the PCA and SPCA methods are utilized first for spectral dimension reduction, respectively. Then, multiscale 2-D-SSA is applied onto the SPCA dimension-reduced images to extract abundant spatial features at different scales, where PCA is applied again for dimensionality reduction. The obtained multiscale spatial features are then fused with the global spectral features derived from PCA to form multiscale spectral–spatial features (MSF-PCs). The performance of the extracted MSF-PCs is evaluated using the support vector machine (SVM) classifier. Experiments on four benchmark HSI data sets have shown that the proposed method outperforms other state-of-the-art feature extraction methods, including several deep learning approaches, when only a small number of training samples are available.

Topics & Concepts

Hyperspectral imagingPattern recognition (psychology)Feature extractionArtificial intelligencePrincipal component analysisComputer scienceRemote sensingFusionSensor fusionFeature (linguistics)Image segmentationSegmentationGeologyLinguisticsPhilosophyRemote-Sensing Image ClassificationRemote Sensing and Land UseAdvanced Image Fusion Techniques
Fusion of PCA and Segmented-PCA Domain Multiscale 2-D-SSA for Effective Spectral-Spatial Feature Extraction and Data Classification in Hyperspectral Imagery | Litcius