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A Bayesian model for joint unmixing and robust classification of hyperspectral image

Abstract : Supervised classification and spectral unmixing are two methods to extract information from hyperspectral images. However, despite their complementarity, they have been scarcely considered jointly. This paper presents a new hierarchical Bayesian model to perform simultaneously both analysis in order to ensure that they benefit from each other. A linear mixture model is proposed to described the pixel measurements. Then a clustering is performed to identify groups of statistically similar abundance vectors. A Markov random field (MRF) is used as prior for the corresponding cluster labels. It promotes a spatial regularization through a Potts-Markov potential and also includes a local potential induced by the classification. Finally, the classification exploits a set of possibly corrupted labeled data provided by the end-user. Model parameters are estimated thanks to a Markov chain Monte Carlo (MCMC) algorithm. The interest of the proposed model is illustrated on synthetic and real data.
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Submitted on : Tuesday, November 5, 2019 - 12:52:48 PM
Last modification on : Wednesday, November 3, 2021 - 7:25:37 AM
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  • HAL Id : hal-02348223, version 1
  • OATAO : 22365
  • PRODINRA : 450302
  • WOS : 000446384603113


Adrien Lagrange, Mathieu Fauvel, Stéphane May, Nicolas Dobigeon. A Bayesian model for joint unmixing and robust classification of hyperspectral image. IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP 2018), Apr 2018, Calgary, Canada. pp.3399-3404. ⟨hal-02348223⟩



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