Unsupervised segmentation of Hidden semi-Markov non stationary chains

Jérome Lapuyade-Lahorgue, Wojciech Pieczynski

Research output: Contribution to journalArticlepeer-review

Abstract

In the classical hidden Markov chain (HMC) model we have a hidden chain X, which is a Markov one and an observed chain Y. HMC are widely used; however, in some situations they have to be replaced by the more general "hidden semi-Markov chains" (HSMC) which are particular "triplet Markov chains" (TMC) T = (X, U, Y), where the auxiliary chain U models the semi-Markovianity of X. Otherwise, non stationary classical HMC can also be modeled by a triplet Markov stationary chain with, as a consequence, the possibility of parameters' estimation. The aim of this paper is to use simultaneously both properties. We consider a non stationary HSMC and model it as a TMC T = (X, U1, U2, Y), where U1 models the semi-Markovianity and U2 models the non stationarity. The TMC T being itself stationary, all parameters can be estimated by the general "Iterative Conditional Estimation" (ICE) method, which leads to unsupervised segmentation. We present some experiments showing the interest of the new model and related processing in image segmentation area.

Original languageEnglish
Pages (from-to)347-354
Number of pages8
JournalAIP Conference Proceedings
Volume872
DOIs
Publication statusPublished - 1 Jan 2006

Keywords

  • Iterative conditional estimation
  • Non-stationary hidden semi-Markov chain
  • Triplet Markov chain
  • Unsupervised segmentation

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