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Principal component analysis / Hyperspectral imaging / Dimension reduction / Spectral imaging / Sparse PCA / Factor analysis / Feature extraction / Support vector machine / Latent semantic indexing / Statistics / Multivariate statistics / Linear discriminant analysis
Date: 2012-05-23 01:04:47
Principal component analysis
Hyperspectral imaging
Dimension reduction
Spectral imaging
Sparse PCA
Factor analysis
Feature extraction
Support vector machine
Latent semantic indexing
Statistics
Multivariate statistics
Linear discriminant analysis

A Robust Band Compression Technique for Hyperspectral Image Classification Qazi Sami ul Haq,Lixin Shi,Linmi Tao,Shiqiang Yang Key Laboratory of Pervasive Computing, Ministry of Education Department of Computer Science an

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