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Band selection of hyperspectral data with low-rank doubly stochastic matrix decomposition

机译:低秩双随机矩阵分解的高光谱数据的波段选择

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In this article, a clustering-based band selection method is proposed to tackle the dimension reduction problem of hyperspectral data. The method is essentially based on low-rank doubly stochastic matrix decomposition, which is more stable than current low-rank approximation clustering methods. Experimental results show that the selected band subsets perform well in hyperspectral data classification problems.
机译:本文提出了一种基于聚类的波段选择方法来解决高光谱数据的降维问题。该方法主要基于低秩双重随机矩阵分解,它比当前的低秩近似聚类方法更稳定。实验结果表明,所选择的波段子集在高光谱数据分类问题中表现良好。

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