Fast spectral clustering with local cosine similarity graphs for hyperspectral images
Zhenxian Lin,
Yuheng Jiang,
Chengmao Wu
Abstract:Due to the complexity of hyperspectral data and the scarcity of labeled samples, unsupervised clustering segmentation has become a hot spot of interest in remote sensing. Sparse subspace clustering (SSC) is the most common clustering approach at the moment, although its computational cost restricts its use on big remote sensing datasets. Furthermore, SSC's neglect of spatial information and limited recognition ability hinder the spatial homogeneity of clustering results. Hence, this work proposes a fast spectr… Show more
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