27 October 2018 Hyperspectral unmixing using sparsity-constrained multilayer non-negative matrix factorization
Hao Fang, Aihua Li, Tao Wang, Huoxi Xu, Yanzhao Su, Hongwei Chang
Author Affiliations +
Abstract
Hyperspectral unmixing (HU) refers to the process of decomposing the hyperspectral image into a set of endmember spectra and the corresponding set of abundance fractions. Non-negative matrix factorization (NMF) has been widely used in HU. However, most NMF-based unmixing methods have single-decomposition structures, which may have poor performance for highly mixed and ill-conditioned data. We proposed a sparsity-constrained multilayer NMF (MLNMF) method for spectral unmixing of highly mixed data. The MLNMF structure was established by decomposing the abundance matrix layer-by-layer to acquire the endmember matrix and the abundance matrix in the next layer. To reduce the space of solutions, sparsity constraints were added to the multilayer model by incorporating an L1 regularizer to the abundance matrix in each layer. Moreover, a layerwise strategy based on the Nesterov’s optimal gradient method was also proposed to optimize the multifactor NMF problem. Experiments on both synthetic data and real data demonstrate that our proposed method outperforms several other state-of-art approaches.
© 2018 Society of Photo-Optical Instrumentation Engineers (SPIE) 1931-3195/2018/$25.00 © 2018 SPIE
Hao Fang, Aihua Li, Tao Wang, Huoxi Xu, Yanzhao Su, and Hongwei Chang "Hyperspectral unmixing using sparsity-constrained multilayer non-negative matrix factorization," Journal of Applied Remote Sensing 12(4), 045009 (27 October 2018). https://doi.org/10.1117/1.JRS.12.045009
Received: 13 June 2018; Accepted: 28 September 2018; Published: 27 October 2018
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KEYWORDS
Signal to noise ratio

Matrices

Optimization (mathematics)

Performance modeling

Hyperspectral imaging

Image processing

Lithium

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