Markov Chain Realization of Joint Integrated Probabilistic Data Association

A practical probabilistic data association filter is proposed for tracking multiple targets in clutter. The number of joint data association events increases combinatorially with the number of measurements and the number of targets, which may become computationally impractical for even small numbers...

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Main Authors: Eui Hyuk Lee, Qian Zhang, Taek Lyul Song
Format: Article
Language:English
Published: MDPI AG 2017-12-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/17/12/2865
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spelling doaj-98b9faf78c5f4d4d9496b4848e0c6e572020-11-25T00:49:50ZengMDPI AGSensors1424-82202017-12-011712286510.3390/s17122865s17122865Markov Chain Realization of Joint Integrated Probabilistic Data AssociationEui Hyuk Lee0Qian Zhang1Taek Lyul Song25th Development Division, Agency for Defense Development, P.O.Box 35, Daejeon, KoreaDepartment of Electronic Systems Engineering, Hanyang University, Ansan, 15588, KoreaDepartment of Electronic Systems Engineering, Hanyang University, Ansan, 15588, KoreaA practical probabilistic data association filter is proposed for tracking multiple targets in clutter. The number of joint data association events increases combinatorially with the number of measurements and the number of targets, which may become computationally impractical for even small numbers of closely located targets in real target-tracking applications in heavily cluttered environments. In this paper, a Markov chain model is proposed to generate a set of feasible joint events (FJEs) for multiple target tracking that is used to approximate the multi-target data association probabilities and the probabilities of target existence of joint integrated probabilistic data association (JIPDA). A Markov chain with the transition probabilities obtained from the integrated probabilistic data association (IPDA) for single-target tracking is designed to generate a random sequence composed of the predetermined number of FJEs without incurring additional computational cost. The FJEs generated are adjusted for the multi-target tracking environment. A computationally tractable set of these random sequences is utilized to evaluate the track-to-measurement association probabilities such that the computational burden is substantially reduced compared to the JIPDA algorithm. By a series of simulations, the track confirmation rates and target retention statistics of the proposed algorithm are compared with the other existing algorithms including JIPDA to show the effectiveness of the proposed algorithm.https://www.mdpi.com/1424-8220/17/12/2865Markov chain data associationJIPDAtarget existencemulti-target tracking
collection DOAJ
language English
format Article
sources DOAJ
author Eui Hyuk Lee
Qian Zhang
Taek Lyul Song
spellingShingle Eui Hyuk Lee
Qian Zhang
Taek Lyul Song
Markov Chain Realization of Joint Integrated Probabilistic Data Association
Sensors
Markov chain data association
JIPDA
target existence
multi-target tracking
author_facet Eui Hyuk Lee
Qian Zhang
Taek Lyul Song
author_sort Eui Hyuk Lee
title Markov Chain Realization of Joint Integrated Probabilistic Data Association
title_short Markov Chain Realization of Joint Integrated Probabilistic Data Association
title_full Markov Chain Realization of Joint Integrated Probabilistic Data Association
title_fullStr Markov Chain Realization of Joint Integrated Probabilistic Data Association
title_full_unstemmed Markov Chain Realization of Joint Integrated Probabilistic Data Association
title_sort markov chain realization of joint integrated probabilistic data association
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2017-12-01
description A practical probabilistic data association filter is proposed for tracking multiple targets in clutter. The number of joint data association events increases combinatorially with the number of measurements and the number of targets, which may become computationally impractical for even small numbers of closely located targets in real target-tracking applications in heavily cluttered environments. In this paper, a Markov chain model is proposed to generate a set of feasible joint events (FJEs) for multiple target tracking that is used to approximate the multi-target data association probabilities and the probabilities of target existence of joint integrated probabilistic data association (JIPDA). A Markov chain with the transition probabilities obtained from the integrated probabilistic data association (IPDA) for single-target tracking is designed to generate a random sequence composed of the predetermined number of FJEs without incurring additional computational cost. The FJEs generated are adjusted for the multi-target tracking environment. A computationally tractable set of these random sequences is utilized to evaluate the track-to-measurement association probabilities such that the computational burden is substantially reduced compared to the JIPDA algorithm. By a series of simulations, the track confirmation rates and target retention statistics of the proposed algorithm are compared with the other existing algorithms including JIPDA to show the effectiveness of the proposed algorithm.
topic Markov chain data association
JIPDA
target existence
multi-target tracking
url https://www.mdpi.com/1424-8220/17/12/2865
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AT taeklyulsong markovchainrealizationofjointintegratedprobabilisticdataassociation
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