DocumentCode :
72552
Title :
A Data-Driven Stochastic Approach for Unmixing Hyperspectral Imagery
Author :
Bhatt, Jignesh S. ; Joshi, Manjunath V. ; Raval, Mehul S.
Author_Institution :
Dhirubhai Ambani Inst. of Inf. & Commun. Technol. (DA-IICT), Gandhinagar, India
Volume :
7
Issue :
6
fYear :
2014
fDate :
Jun-14
Firstpage :
1936
Lastpage :
1946
Abstract :
In this paper, we propose a two-step Bayesian approach to handle the ill-posed nature of the unmixing problem for accurately estimating the abundances. The abundances are dependent on the scene contents and they represent mixing proportions of the endmembers over an area. In this work, a linear mixing model (LMM) is used for the image formation process in order to derive the data term. In the first step, a Huber-Markov random field (HMRF)-based prior distribution is assumed to model the dependencies within the abundances across the spectral space of the data. The threshold used in the HMRF prior is derived from an initial estimate of abundances obtained using the matched filters. This makes the HMRF prior data-driven, i.e., dHMRF. Final abundance maps are obtained in the second step within a maximum a posteriori probability (MAP) framework, and the objective function is optimized using the particle swarm optimization (PSO). Theoretical analysis is carried out to show the effectiveness of the proposed method. The approach is evaluated using the synthetic and real AVIRIS Cuprite data. The proposed method has the following advantages. 1) The estimated abundances are resistant to noise since they are based on an initial estimate that has high signal-to-noise ratio (SNR). 2) The variance in the abundance maps is well preserved since the threshold in the dHMRF is derived from the data.
Keywords :
Bayes methods; Markov processes; geophysical image processing; hyperspectral imaging; maximum likelihood estimation; particle swarm optimisation; probability; remote sensing; stochastic processes; Huber-Markov random field based prior distribution; data-driven stochastic approach; hyperspectral imagery; image formation process; linear mixing model; maximum a posteriori probability framework; particle swarm optimization; signal-to-noise ratio; spectral unmixing; two-step Bayesian approach; Estimation; Histograms; Hyperspectral imaging; Signal to noise ratio; Vectors; Abundance estimation; Huber function; Markov random field (MRF); hyperspectral imaging; spectral unmixing;
fLanguage :
English
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher :
ieee
ISSN :
1939-1404
Type :
jour
DOI :
10.1109/JSTARS.2014.2328597
Filename :
6845305
Link To Document :
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