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Bayesian multi-object filtering for pairwise markov chains

  • Institut Mines-Télécom

Research output: Contribution to journalArticlepeer-review

Abstract

Random finite sets (RFS) are recent tools for addressing the multi-object filtering problem. The probability hypothesis density (PHD) Filter is an approximation of the multi-object Bayesian filter, which results from the RFS formulation of the problem and has been used in many applications. In the RFS framework, it is assumed that each target and associated observation follow a hidden Markov chain (HMC) model. HMCs conveniently describe some physical properties of practical interest for practitioners, but they also implicitly imply restrictive independence properties which, in practice, may not be satisfied by data. In this paper, we show that these structural limitations of HMC models can somehow be relaxed by embedding them into the more general class of pairwise Markov chain (PMC) models. We thus focus on the computation of the PHD filter in a PMC framework, and we propose a practical implementation of the PHD filter for a particular class of PMC models.

Original languageEnglish
Article number6553208
Pages (from-to)4481-4490
Number of pages10
JournalIEEE Transactions on Signal Processing
Volume61
Issue number18
DOIs
Publication statusPublished - 5 Sept 2013

Keywords

  • Random finite sets
  • hidden Markov chains
  • multi-object filtering
  • pairwise Markov chains
  • probability hypothesis density

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