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Unsupervised Hyperspectral Band Selection Method Based on Low-Rank Representation

机译:基于低秩表示的无监督高光谱选择方法

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In order to reduce the spectral redundancy of hyperspectral remote sensing images and reduce the computational complexity of subsequent processing, an unsupervised hyperspectral image band selection algorithm based on low-rank representation (LRBS) was proposed in this paper. First, a low-rank representation of the hyperspectral image is proposed and a low-rank coefficient matrix is obtained. Then, each column of the low-rank coefficient is used as a vertex of the graph to perform spectral clustering. Lastly, we use the fixed initial k-means cluster centers for clustering to get the salient band of each cluster. The experimental simulation results show that the bands selected by LRBS algorithm can improve the classification accuracy and have better performance than other methods.
机译:为了降低高光谱遥感图像的频谱冗余并降低后续处理的计算复杂性,本文提出了一种基于低秩表示(LRB)的无监督的超光图像频带选择算法。首先,提出了高光谱图像的低秩表示,并且获得了低秩系数矩阵。然后,将低秩系数的每列用作图表的顶点以进行频谱聚类。最后,我们使用固定的初始k-means群集中心来群集以获取每个群集的突出频带。实验模拟结果表明,LRB算法选择的频段可以提高分类精度并具有比其他方法更好的性能。

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