Multiview-based Spectral Weighted and Low-Rank for Row-sparsity Hyperspectral Unmixing |
Zhang, Shuaiyang
(Department of Electronic and Optical Engineering, Army Engineering University of PLA)
Hua, Wenshen (Department of Electronic and Optical Engineering, Army Engineering University of PLA) Liu, Jie (Department of Electronic and Optical Engineering, Army Engineering University of PLA) Li, Gang (Department of Electronic and Optical Engineering, Army Engineering University of PLA) Wang, Qianghui (Department of Electronic and Optical Engineering, Army Engineering University of PLA) |
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