4.7 Article

Bayesian Sequential Track Formation

Journal

IEEE TRANSACTIONS ON SIGNAL PROCESSING
Volume 62, Issue 24, Pages 6366-6379

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSP.2014.2364013

Keywords

Target labelling; multiple target tracking; Bayesian framework; random finite sets

Funding

  1. Spanish national research and development program [TEC2011-28683-C02-01]
  2. Spanish national research and development program under Project Comonsens (Consolider-Ingenio) [CSD2008-00010]

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This paper presents a theoretical framework for track building in multiple-target scenarios from the Bayesian point of view. It is assumed that the number of targets is fixed and known. We propose two optimal methods for building tracks sequentially. The first one uses the labelling of the current multitarget state estimate that minimizes the mean-square labeled optimal subpattern assignment error. This method requires knowledge of the posterior density of the vector-valued state. The second assigns the labeling that maximizes the probability that the current multi-target state estimate is optimally linked with the available tracks at the previous time step. In this case, we only require knowledge of the random finite-set posterior density without labels.

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