Computer Science – Computer Vision and Pattern Recognition
Scientific paper
2011-11-03
Computer Science
Computer Vision and Pattern Recognition
4 pages, conference
Scientific paper
Spectral unmixing is an important tool in hyperspectral data analysis for estimating endmembers and abundance fractions in a mixed pixel. This paper examines the applicability of a recently developed algorithm called graph regularized nonnegative matrix factorization (GNMF) for this aim. The proposed approach exploits the intrinsic geometrical structure of the data besides considering positivity and full additivity constraints. Simulated data based on the measured spectral signatures, is used for evaluating the proposed algorithm. Results in terms of abundance angle distance (AAD) and spectral angle distance (SAD) show that this method can effectively unmix hyperspectral data.
Ghassemian Hassan
Khodadadzadeh Mahdi
Rajabi Roozbeh
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