Combining ensemble technique of support vector machines with the optimal kernel method for hyperspectral image classification

IGARSS(2011)

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摘要
In remote sensing researches, the curse of dimensionality is one greatly difficult classification problem. Many studies have demonstrated that multiple classifier systems, such as the random subspace method (RSM), can alleviate small sample size and high dimensionality concern and obtain more outstanding and robust results than a single classifier on extensive pattern recognition issues. A dynamic subspace method (DSM) was proposed for constructing component classifiers with adaptive subspaces to adjust the shortcomings of RSM based on re substitution accuracy by applying each classifier. However, the performances of SVMs are based on choosing the proper kernel functions or proper parameters of a kernel function. The objective of this research is to develop a novel ensemble technique based on support vector machines (SVMs) via the optimal kernel method, and propose a novel subspace selection mechanism, named the kernel-based dynamic subspace method (KDSM), to improve DSM on automatically determining dimensionality and selecting component dimensions for diverse subspaces. Experimental results show a sound performance of classification on the famous hyperspectral images, Washington DC Mall.
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关键词
remote sensing researches,dimensionality concern,remote sensing,kernel functions,hyperspectral image classification,random processes,ensemble technique,ensemble,component classifiers,resubstitution accuracy,subspace selection mechanism,svm,kernel-based dynamic subspace method,dimensionality curse,subspace method,multiple classifier systems,image classification,extensive pattern recognition issues,sound performance,geophysical image processing,classification problem,diverse subspaces,kdsm,classification,component dimensions,hyperspectral images,adaptive subspaces,washington dc mall,random subspace method,optimal kernel method,rsm,support vector machines,kernel function,nickel,kernel,pattern recognition,accuracy,kernel method,curse of dimensionality,hyperspectral imaging,support vector machine
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