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📄 Abstract
Abstract: Hyperspectral unmixing (HU) is a critical yet challenging task in remote
sensing. However, existing nonnegative matrix factorization (NMF) methods with
graph learning mostly focus on first-order or second-order nearest neighbor
relationships and usually require manual parameter tuning, which fails to
characterize intrinsic data structures. To address the above issues, we propose
a novel adaptive multi-order graph regularized NMF method (MOGNMF) with three
key features. First, multi-order graph regularization is introduced into the
NMF framework to exploit global and local information comprehensively. Second,
these parameters associated with the multi-order graph are learned adaptively
through a data-driven approach. Third, dual sparsity is embedded to obtain
better robustness, i.e., $\ell_{1/2}$-norm on the abundance matrix and
$\ell_{2,1}$-norm on the noise matrix. To solve the proposed model, we develop
an alternating minimization algorithm whose subproblems have explicit
solutions, thus ensuring effectiveness. Experiments on simulated and real
hyperspectral data indicate that the proposed method delivers better unmixing
results.