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    Unsupervised Classification in Hyperspectral Imagery with Nonlocal Total Variation and Primal-Dual Hybrid Gradient Algorithm
    with W. Zhu, V. Chayes, A. Tiard, S. Sanchez, D. Dahlberg, A. L. Bertozzi, S. Osher, and D. Zosso
    In this paper, a graph-based nonlocal total variation method is proposed for unsupervised classification of hyperspectral images. The variational problem is solved by the primal-dual hybrid gradient algorithm. By squaring the labeling function and using a stable simplex clustering routine, an unsupervised clustering method with random initialization can be implemented. The effectiveness of this proposed algorithm is illustrated on both synthetic and real-world HSI, and numerical results show tha…Read more