DocumentCode :
1215464
Title :
Tracking in clutter using IMM-IPDA-based algorithms
Author :
Musicki, Darko ; Suvorova, Sofia
Volume :
44
Issue :
1
fYear :
2008
fDate :
1/1/2008 12:00:00 AM
Firstpage :
111
Lastpage :
126
Abstract :
We describe three single-scan probabilistic data association (PDA) based algorithms for tracking manoeuvering targets in clutter. These algorithms are derived by integrating the interacting multiple model (IMM) estimation algorithm with the PDA approximation. Each IMM model a posteriori state estimate probability density function (pdf) is approximated by a single Gaussian pdf. Each algorithm recursively updates the probability of target existence, in the manner of integrated PDA (IPDA). The probability of target existence is a track quality measure, which can be used for false track discrimination. The first algorithm presented, IMM-IPDA, is a single target tracking algorithm. Two multitarget tracking algorithms are also presented. The IMM-JIPDA algorithm calculates a posteriori probabilities of all measurement to track allocations, in the manner of the joint IPDA (JIPDA). The number of measurement to track allocations grows exponentially with the number of shared measurements and the number of tracks which share the measurements. Therefore, IMM-JIPDA can only be used in situations with a small number of crossing targets and low clutter measurement density. The linear multitarget IMM-IPDA (IMM-LMIPDA) is also a multitarget tracking algorithm, which achieves the multitarget capabilities by integrating linear multitarget (LM) method with IMM-IPDA. When updating one track using the LM method, the other tracks modulate the clutter measurement density and are subsequently ignored. In this fashion, LM achieves multitarget capabilities using the number of operations which are linear in the: number of measurements and the number of tracks, and can be used in complex scenarios, with dense clutter and a large number of targets.
Keywords :
Gaussian processes; clutter; recursive estimation; state estimation; target tracking; Gaussian pdf; IMM-IPDA-based algorithms; a posteriori state estimate probability density function; clutter measurement density; integrated PDA; interacting multiple model estimation algorithm; linear multitarget method; manoeuvering target tracking; multitarget tracking algorithms; single-scan probabilistic data association; track allocations; Approximation algorithms; Australia; Density measurement; Layout; Object detection; Probability density function; State estimation; Surveillance; Target tracking; Trajectory;
fLanguage :
English
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9251
Type :
jour
DOI :
10.1109/TAES.2008.4516993
Filename :
4516993
Link To Document :
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