Title of article
A Stochastic Method for Bayesian Estimation of Hidden Markov Random Field ModelsWith Application to a Color Model
Author/Authors
F. Destrempes، نويسنده , , M. Mignotte، نويسنده , , and J.-F. Angers، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
13
From page
1096
To page
1108
Abstract
We propose a new stochastic algorithm for computing
useful Bayesian estimators of hidden Markov random
field (HMRF) models that we call exploration/selection/estimation
(ESE) procedure. The algorithm is based on an optimization
algorithm of O. François, called the exploration/selection (E/S) algorithm.
The novelty consists of using the a posteriori distribution
of the HMRF, as exploration distribution in the E/S algorithm.
The ESE procedure computes the estimation of the likelihood
parameters and the optimal number of region classes, according
to global constraints, as well as the segmentation of the image. In
our formulation, the total number of region classes is fixed, but
classes are allowed or disallowed dynamically. This framework
replaces the mechanism of the split-and-merge of regions that
can be used in the context of image segmentation. The procedure
is applied to the estimation of a HMRF color model for images,
whose likelihood is based on multivariate distributions, with each
component following a Beta distribution. Meanwhile, a method for
computing the maximum likelihood estimators of Beta distributions
is presented. Experimental results performed on 100 natural
images are reported.We also include a proof of convergence of the
E/S algorithm in the case of nonsymmetric exploration graphs.
Keywords
image segmentation , exploration/selection (E/S) algorithm , Color model , maximum likelihood (ML) estimationof Beta distributions. , Bayesian estimation of hidden Markov randomfield (HMRF) models
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Serial Year
2005
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Record number
397128
Link To Document