DocumentCode :
1850671
Title :
Unsupervised segmentation of nonstationary pairwise Markov Chains using evidential priors
Author :
El Yazid Boudaren, Mohamed ; Monfrini, Emmanuel ; Pieczynski, Wojciech
Author_Institution :
Lab. Math. Appl., Ecole Militaire Polytech., Algiers, Algeria
fYear :
2012
fDate :
27-31 Aug. 2012
Firstpage :
2243
Lastpage :
2247
Abstract :
Hidden Markov models have been widely used to solve some inverse problems occurring in image and signal processing. These models have been recently generalized to pairwise Markov chains, which present higher modeling capabilities with comparable computational complexity. To be applicable in the unsupervised context, both models assume the data of interest stationary. When these latter are actually stationary, the models yield satisfactory results thanks to some Bayesian techniques such as MPM and MAP. However, when the data are nonstationary, they fail to establish an appropriate link with the data and the obtained results are quite poor. One interesting way to overcome this drawback is to use the Dempster-Shafer theory of evidence by introducing a mass function to model the lack of knowledge of the a priori distributions of the hidden data to be recovered. It has been shown that the use of such theory in the hidden Markov chains context yields significantly better results than those provided by the standard models. The aim of this paper is to apply the same theory in the pairwise Markov chains context to deal with nonstationary data hidden with correlated noise. We show that MPM restoration of data remains workable thanks to the triplet Markov models formalism. We also provide the corresponding parameters estimation in the unsupervised context. The new evidential model is then assessed through experiments conducted on synthetic and real images.
Keywords :
Bayes methods; computational complexity; hidden Markov models; image segmentation; inference mechanisms; inverse problems; parameter estimation; uncertainty handling; Bayesian technique; Dempster-Shafer theory; MAP; MPM data restoration; computational complexity; evidential prior; hidden Markov model; image processing; inverse problem; noise correlation; nonstationary pairwise Markov chain; parameter estimation; signal processing; triplet Markov model formalism; unsupervised segmentation; Computational modeling; Data models; Hidden Markov models; Image restoration; Markov processes; Noise; Parameter estimation; Hidden Markov chains; nonstationary data; pairwise Markov chains; theory of evidence; triplet Markov chains;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2012 Proceedings of the 20th European
Conference_Location :
Bucharest
ISSN :
2219-5491
Print_ISBN :
978-1-4673-1068-0
Type :
conf
Filename :
6334008
Link To Document :
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