DocumentCode :
3731775
Title :
Nonlinear spectral unmixing using residual component analysis and a Gamma Markov random field
Author :
Yoann Altmann;Marcelo Pereyra;Steve McLaughlin
Author_Institution :
Heriot-Watt University, School of Engineering and Physical Sciences, Edinburgh, United Kingdom
fYear :
2015
Firstpage :
165
Lastpage :
168
Abstract :
This paper presents a new Bayesian nonlinear unmixing model for hyperspectral images. The proposed model represents pixel reflectances as linear mixtures of end-members, corrupted by an additional combination of nonlinear terms (with respect to the end-members) and additive Gaussian noise. A central contribution of this work is to use a Gamma Markov random field to capture the spatial structure and correlations of the nonlinear terms, and by doing so to improve significantly estimation performance. In order to perform hyperspectral image unmixing, the Gamma Markov random field is embedded in a hierarchical Bayesian model representing the image observation process and prior knowledge, followed by inference with a Markov chain Monte Carlo algorithm that jointly estimates the model parameters of interest and marginalises latent variables. Simulations conducted with synthetic and real data show the accuracy of the proposed SU and nonlinearity estimation strategy for the analysis of hyperspectral images.
Keywords :
"Bayes methods","Hyperspectral imaging","Estimation","Computational modeling","Markov processes","Analytical models","Yttrium"
Publisher :
ieee
Conference_Titel :
Computational Advances in Multi-Sensor Adaptive Processing (CAMSAP), 2015 IEEE 6th International Workshop on
Type :
conf
DOI :
10.1109/CAMSAP.2015.7383762
Filename :
7383762
Link To Document :
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