Ensemble learning based on multi-features fusion and selection for polarimetric SAR image classification

Signal Processing(2014)

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摘要
Aim at the problems of low classification accuracy rate of the traditional single feature and the multi-features dimension disaster, a ensemble learning algorithm based on multi-features fusion and selection is proposed, and is used for polarimetric SAR image classification. Firstly, various features of SAR image is extracted and fused by normalized; then, different feature selection methods are used to select features, and different feature subsets are generated; thirdly, different feature sets are used to train the SVM classifier, and the individual classifiers will be got; finally, each individual classifier is ensembled to a ensemble classifier. The experiments indicate that higher classification accuracy can be obtained by the algorithm.
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关键词
feature selection,image classification,learning (artificial intelligence),radar computing,radar imaging,sensor fusion,support vector machines,synthetic aperture radar,SVM classifier,classification accuracy rate,ensemble classifier,ensemble learning algorithm,feature selection methods,feature sets,multifeatures dimension disaster,multifeatures fusion,multifeatures selection,polarimetric SAR image classification,Synthetic Aperture Radar,ensemble learning,feature fusion,feature selection,image classification,
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