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Riemannian manifold learning based k-nearest-neighbor for hyperspectral image classification

机译:基于黎曼流形学习的k近邻用于高光谱图像分类

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The existence of nonlinear characteristics in hyperspectral data is considered as an influential factor curtailing the classification accuracy of canonical linear classifier like k-nearest neighbor (k-NN). To deal with the problem, we investigated approaches to combine manifold learning methods and the k-NN classifier to preserve nonlinear characteristics contained in hyperspectral imagery. Then we proposed a Riemannian manifold learning (RML) based k-NN classifier for hyperspectral image classification, which substitutes the Euclidean distances used in canonical kNN by geodesic distances yielded by RML. The experimental results on AVIRIS data show that in most cases, the RML-kNN Classifier accesses higher classification accuracies than canonical k-NN.
机译:高光谱数据中非线性特征的存在被认为是影响像k近邻(k-NN)这样的典范线性分类器分类精度的影响因素。为了解决该问题,我们研究了将流形学习方法和k-NN分类器相结合以保留高光谱图像中包含的非线性特征的方法。然后,我们提出了一种基于黎曼流形学习(RML)的k-NN分类器,用于高光谱图像分类,它用RML产生的测地距离替换了规范kNN中使用的欧几里得距离。 AVIRIS数据上的实验结果表明,在大多数情况下,RML-kNN分类器比典型的k-NN具有更高的分类精度。

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