Feature Selection Based on High Dimensional Model Representation for Hyperspectral Images

In hyperspectral image analysis, the classification task has generally been addressed jointly with dimensionality reduction due to both the high correlation between the spectral features and the noise present in spectral bands, which might significantly degrade classification performance. In supervi...

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Veröffentlicht in:IEEE transactions on image processing 2017-06, Vol.26 (6), p.2918-2928
Hauptverfasser: Taskin, Gulsen, Kaya, Huseyin, Bruzzone, Lorenzo
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Kaya, Huseyin
Bruzzone, Lorenzo
description In hyperspectral image analysis, the classification task has generally been addressed jointly with dimensionality reduction due to both the high correlation between the spectral features and the noise present in spectral bands, which might significantly degrade classification performance. In supervised classification, limited training instances in proportion with the number of spectral features have negative impacts on the classification accuracy, which is known as Hughes effects or curse of dimensionality in the literature. In this paper, we focus on dimensionality reduction problem, and propose a novel feature-selection algorithm, which is based on the method called high dimensional model representation. The proposed algorithm is tested on some toy examples and hyperspectral datasets in comparison with conventional feature-selection algorithms in terms of classification accuracy, stability of the selected features and computational time. The results show that the proposed approach provides both high classification accuracy and robust features with a satisfactory computational time.
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subjects Computational efficiency
Computational modeling
Correlation
Dimensionality reduction
Feature extraction
feature selection
high dimensional model representation
hyperspectral image classification
Hyperspectral imaging
Kernel
Training
title Feature Selection Based on High Dimensional Model Representation for Hyperspectral Images
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