A novel decision fusion approach to improving classification accuracy of hyperspectral images

Geoscience and Remote Sensing Symposium(2012)

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摘要
In this paper discrete wavelet transform (DWT) and empirical mode decomposition (EMD) are employed as a preprocessing stage in a multiclassifier and decision fusion system. The proposed method consists of three steps. In the first step, 2D-EMD is performed on each hyperspectral image band in order to obtain useful spatial information. Then, useful spectral information is obtained by applying the 1D-DWT to each signature of 2D-EMD performed bands. A novel feature set is generated using both spectral and spatial information. In the second step, each feature is independently classified by support vector machines (SVM), creating a multiclassifier system. In the last step, classification results are fused using a decision fusion criterion to produce one final classification. The proposed method improves overall classification accuracy over independent classifiers when reduced number of features are employed.
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关键词
decision theory,discrete wavelet transforms,geophysical image processing,image classification,image fusion,support vector machines,1D-DWT,2D-EMD,SVM,classification accuracy improvement,decision fusion system,discrete wavelet transform,empirical mode decomposition,feature set,hyperspectral image band,hyperspectral image classification,multiclassifier system,support vector machines,Classification,Decision Fusion,Dimensionality Reduction,Discrete Wavelet Transform,Empirical Mode Decomposition
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