A semisupervised feature extraction method based on fuzzy-type linear discriminant analysis

FUZZ-IEEE(2011)

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摘要
Linear discriminant analysis (LDA) is a commonly used feature extraction (FE) method to resolve the Hughes phenomenon for classification. The Hughes phenomenon (also called the curse of dimensionality) is often encountered in classification when the dimensionality of the space grows and the size of the training set is fixed, especially in the small sampling size problem. Recent studies show that the spatial information can greatly improve the classification performance. Hence, for hyperspectral image classification, it is not only necessary to use the available spectral information but also to exploit the spatial information. In this paper, a semisupervised feature extraction method which is based on the scatter matrices of the fuzzy-type LDA and uses the semi-information is proposed. The experimental results on two hyperspectral images, the Washington DC Mall and the Indian Pine Site, show that the proposed method can yield a better classification performance than LDA in the small sampling size problem.
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关键词
fuzzy-type lda,fuzzy set theory,spectral information,hyperspectral image classification,small sampling size problem,spatial information,curse-of-dimensionality,hughes phenomenon,feature extraction,image classification,scatter matrices,geophysical image processing,semisupervised feature extraction,linear discriminate analysis,classification performance,fuzzy-type linear discriminant analysis,linear discriminant analysis,accuracy,nickel,curse of dimensionality,hyperspectral imaging,vegetation
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