Multisensor triplet Markov fields and theory of evidence

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摘要

Hidden Markov Fields (HMF) are widely applicable to various problems of image processing. In such models, the hidden process of interest X is a Markov field, which must be estimated from its observable noisy version Y. The success of HMF is due mainly to the fact that X remains Markov conditionally on the observed process, which facilitates different processing strategies such as Bayesian segmentation. Such models have been recently generalized to ‘Pairwise’ Markov fields (PMF), which offer similar processing advantages and superior modeling capabilities. In this generalization, one directly assumes the Markovianity of the pair (X,Y). Afterwards, ‘Triplet’ Markov fields (TMF) have been proposed, in which the distribution of (X,Y) is the marginal distribution of a Markov field (X,U,Y), where U is an auxiliary random field. So U can have different interpretations and, when the set of its values is not too complex, X can still be estimated from Y. The aim of this paper is to show some connections between TMF and the Dempster–Shafer theory of evidence. It is shown that TMF allow one to perform the Dempster–Shafer fusion in different general situations, possibly involving several sensors. As a consequence, Bayesian segmentation strategies remain applicable.

论文关键词:Multisensor hidden Markov fields,Pairwise Markov fields,Triplet Markov fields,Bayesian classification,Dempster–Shafer fusion,Theory of evidence,Statistical unsupervised non-stationary image segmentation

论文评审过程:Received 20 October 2003, Revised 20 September 2005, Accepted 24 September 2005, Available online 28 November 2005.

论文官网地址:https://doi.org/10.1016/j.imavis.2005.09.012