DocumentCode :
1654318
Title :
Unmixing hyperspectral images using a normal compositional model and MCMC methods
Author :
Eches, O. ; Dobigeon, N. ; Mailhes, C. ; Tourneret, J.Y.
Author_Institution :
IRIT/INP-ENSEEIHT, Univ. of Toulouse, Toulouse, France
fYear :
2009
Firstpage :
646
Lastpage :
649
Abstract :
This paper studies a new unmixing algorithm for hyperspectral images. Each pixel of the image is modeled as a linear combination of endmembers which are supposed to be random in order to model uncertainties regarding their knowledge. More precisely, endmembers are modeled as Gaussian vectors with known means (resulting from an endmember extraction algorithm such as the famous N-FINDR or VCA algorithm). This paper proposes to estimate the mixture coefficients (referred to as abundances) using a Bayesian algorithm. Suitable priors are assigned to the abundances in order to satisfy positivity and additivity constraints whereas a conjugate prior is chosen for the variance. The computational complexity of the resulting Bayesian estimators is alleviated by constructing an hybrid Gibbs algorithm to generate abundance and variance samples distributed according to the posterior distribution of the unknown parameters. The associated hyperparameter is also generated. The performance of the proposed methodology is evaluated thanks to simulation results conducted on synthetic and real images.
Keywords :
Bayes methods; Gaussian processes; Markov processes; Monte Carlo methods; computational complexity; feature extraction; geophysical signal processing; image processing; spectral analysis; statistical distributions; Bayesian algorithm; Gaussian vector; MCMC method; computational complexity; endmember extraction algorithm; hybrid Gibbs algorithm; hyperspectral image; mixture coefficient estimation; normal compositional model; posterior distribution; spectral unmixing algorithm; variance sample; Bayesian methods; Computational complexity; Dual band; Hybrid power systems; Hyperspectral imaging; Inference algorithms; Pixel; Principal component analysis; Uncertainty; Vectors; Bayesian inference; Monte Carlo methods; hyperspectral images; normal compositional model; spectral unmixing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Statistical Signal Processing, 2009. SSP '09. IEEE/SP 15th Workshop on
Conference_Location :
Cardiff
Print_ISBN :
978-1-4244-2709-3
Electronic_ISBN :
978-1-4244-2711-6
Type :
conf
DOI :
10.1109/SSP.2009.5278494
Filename :
5278494
Link To Document :
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