Author_Institution :
Departement CITI, Inst. Nat. des Telecommun., Evry, France
Abstract :
We propose a model called a pairwise Markov chain (PMC), which generalizes the classical hidden Markov chain (HMC) model. The generalization, which allows one to model more complex situations, in particular implies that in PMC the hidden process is not necessarily a Markov process. However, PMC allows one to use the classical Bayesian restoration methods like maximum a posteriori (MAP), or maximal posterior mode (MPM). So, akin to HMC, PMC allows one to restore hidden stochastic processes, with numerous applications to signal and image processing, such as speech recognition, image segmentation, and symbol detection or classification, among others. Furthermore, we propose an original method of parameter estimation, which generalizes the classical iterative conditional estimation (ICE) valid for a classical hidden Markov chain model, and whose extension to possibly non-Gaussian and correlated noise is briefly treated. Some preliminary experiments validate the interest of the new model.
Keywords :
Gaussian processes; Markov processes; hidden Markov models; image segmentation; noise; parameter estimation; probability; classical Bayesian restoration methods; correlated noise; hidden Markov chain; hidden stochastic processes; image processing; image segmentation; iterative conditional estimation; maximal posterior mode; maximum a posteriori; nonGaussian noise; pairwise Markov chain; parameter estimation; signal processing; speech recognition; symbol classification; symbol detection; unsupervised classification; Bayesian methods; Hidden Markov models; Image processing; Image restoration; Image segmentation; Markov processes; Signal processing; Signal restoration; Speech recognition; Stochastic processes;