Preprint / Version 2

Spectral Unmixing With Perturbed Endmembers

##article.authors##

  • Reza Arablouei

DOI:

https://doi.org/10.31224/osf.io/7vpfn

Keywords:

Alternating direction method of multipliers, Block coordinate-descent, Cramer-Rao lower bound, Hyperspectral unmixing, Instrumental variable, Perturbed endmembers, Total least-squares, Total variation

Abstract

We consider the problem of supervised spectral unmixing with a fully-perturbed linear mixture model where the given endmembers, as well as the observations of the spectral image, are subject to perturbation due to noise, error, mismatch, etc. We calculate the Fisher information matrix and the Cramer-Rao lower bound associated with the estimation of the abundance matrix in the considered fully-perturbed linear spectral unmixing problem. We develop an algorithm for estimating the abundance matrix by minimizing a constrained and regularized maximum-loglikelihood objective function using the block coordinate-descend iterations and the alternating direction method of multipliers. We analyze the convergence of the proposed algorithm theoretically and perform simulations with real hyperspectral image datasets to evaluate its performance. The simulation results corroborate the efficacy of the proposed algorithm in mitigating the adverse effects of perturbation in the endmembers.

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Posted

2017-12-07 — Updated on 2017-12-07

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