Affiliation of Author(s):航天学院
Journal:DIGITAL SIGNAL PROCESSING
Key Words:Hyperspectral unmixing Dictionary-aided unmixing Sparse regression Simultaneous sparse representation
Abstract:Dictionary-aided unmixing has been introduced as a semi-supervised unmixing method, under the assumption that the observed mixed pixel of a hyperspectral image can be expressed in the form of different linear combinations of a few spectral signatures from an available spectral library. Sparse regression-based unmixing methods have been recently proposed to solve this problem. Mostly, I-p-norm minimization is a closer surrogate to the l(0)-norm minimization and can be solved more efficiently than l(1)-norm minimization. In this paper, we model the hyperspectral unmixing as a constrained l(2,q)-l(2,p) optimization problem. To effectively solve the induced optimization problems for any q (1 <= q <= 2) and p (0 < p <= 1), an iteratively reweighted least squares algorithm is developed and the convergence of the proposed method is also demonstrated. Experimental evaluation carried out on synthetic and real hyperspectral data shows that the proposed method yields better spectral unmixing accuracy in both quantitative and qualitative evaluations than state-of-the-art unmixing algorithms. (C) 2017 Elsevier Inc. All rights reserved.
ISSN No.:1051-2004
Translation or Not:no
Date of Publication:2018-02-01
Co-author:Bian, Chending,Li, Yunsong,Wang, Keyan
Correspondence Author:Kong Fan Qiang
Professor
Supervisor of Doctorate Candidates
Gender:Male
Alma Mater:西安电子科技大学
Education Level:西安电子科技大学
Degree:Doctoral Degree in Engineering
School/Department:College of Astronautics
Discipline:Communications and Information Systems
Business Address:航天学院D11楼403室
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