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Dynamic mixing kernels in Gaussian Mixture Classifier for Hyperspectral Classification

机译:高斯混合分类器中用于高光谱分类的动态混合核

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摘要

In this paper, new Gaussian mixture classifiers are designed to deal with the case of an unknown number of mixing kernels. Not knowing the true number of mixing components is a major learning problem for a mixture classifier using expectation-maximization (EM). To overcome this problem, the training algorithm uses a combination of covariance constraints, dynamic pruning, splitting and merging of mixture kernels of the Gaussian mixture to correctly automate the learning process. This structural learning of Gaussian mixtures is employed to model and classify Hyperspectral imagery (HSI) data. The results from the HSI experiments suggested that this new methodology is a potential alternative to the traditional mixture based modeling and classification using general EM.
机译:在本文中,设计了新的高斯混合分类器来处理未知数量的混合核的情况。对于使用期望最大化(EM)的混合物分类器,不知道混合组分的真实数量是一个主要的学习问题。为了克服这个问题,训练算法结合使用了协方差约束,动态修剪,高斯混合的混合核的分解和合并,以正确地使学习过程自动化。高斯混合的这种结构学习可用于对高光谱图像(HSI)数据进行建模和分类。 HSI实验的结果表明,这种新方法可以替代使用常规EM的传统基于混合物的建模和分类。

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