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Hyperspectral Image Classification by Fusion of Multiple Classifiers
2016
International Journal of Database Theory and Application
Hyperspectral image mostly have very large amounts of data which makes the computational cost and subsequent classification task a difficult issue. Firstly, to solve the problem of computational complexity, spectral clustering algorithm is imported to select efficient bands for subsequent classification task. Secondly, due to lack of labeled training sample points, this paper proposes a new algorithm that combines support vector machines and Bayesian classifier to create a
doi:10.14257/ijdta.2016.9.2.20
fatcat:ymsfuojsqzevbhqh2cew5gfgpa