Abstract

Low-rank representation with hypergraph regularization has achieved great success in hyperspectral imagery, which can explore global structure, and further incorporate local information. Existing hypergraph learning methods only construct the hypergraph by a fixed similarity matrix or are adaptively optimal in original feature space; they do not update the hypergraph in subspace-dimensionality. In addition, the clustering performance obtained by the existing k-means-based clustering methods is unstable as the k-means method is sensitive to the initialization of the cluster centers. In order to address these issues, we propose a novel unified low-rank subspace clustering method with dynamic hypergraph for hyperspectral images (HSIs). In our method, the hypergraph is adaptively learned from the low-rank subspace feature, which can capture a more complex manifold structure effectively. In addition, we introduce a rotation matrix to simultaneously learn continuous and discrete clustering labels without any relaxing information loss. The unified model jointly learns the hypergraph and the discrete clustering labels, in which the subspace feature is adaptively learned by considering the optimal dynamic hypergraph with the self-taught property. The experimental results on real HSIs show that the proposed methods can achieve better performance compared to eight state-of-the-art clustering methods.

Highlights

  • Hyperspectral image (HSI) classification is an important problem in the remote sensing community

  • The hypergraph is adaptively learned from the low-rank subspace feature

  • Instead of pre-constructing a fixed hypergraph incidence and weight matrices, the hypergraph is adaptively learned from the low-rank subspace feature

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Summary

Introduction

Hyperspectral image (HSI) classification is an important problem in the remote sensing community. With the aim of exploiting the unlabeled remote sensing data, unsupervised classification methods containing the segmentation of the dataset into several groups with no prior label information are necessary. The two most popular categories suitable for the characteristics of the HSIs are centroid-based methods and spectral-based methods. The spectral-based clustering methods have been highly popular and have been widely used for hyperspectral data clustering. These methods construct a similarity matrix based on the original data first, apply the centroid-based methods to the eigenspaces of the Laplacian matrix to segment pixels. The locally spectral clustering (LSC) [8]

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