Title :
Probabilistic multihypothesis trackerwith an evolving poisson prior
Author_Institution :
Nat. Security, Intell. Surveillance, & Reconnaissance Div., Defence Sci. & Technol. Organ., Edinburgh, SA, Australia
Abstract :
The probabilistic multihypothesis tracker (PMHT) is an efficient multitarget tracking algorithm that performs data association under a conditional independence assumption. A key part of the measurement model is the data-association prior, which can be used as a track quality measure for track management decisions. The original PMHT makes this prior an unknown fixed parameter. The PMHT with hysteresis extended the measurement model by adding a Markov chain hyperparameter to the prior, but this came at the cost of exponential complexity in the number of targets. This complexity comes as a consequence of the normalization of the prior. This article shows that the PMHT data-association model is equivalent to assuming that targets create a Poisson-distributed number of measurements; an alternative PMHT is derived that deals directly with the Poisson model parameters and retains linear complexity in the number of targets.
Keywords :
Markov processes; Poisson distribution; computational complexity; sensor fusion; target tracking; Markov chain hyperparameter; PMHT; Poisson distribution; Poisson model parameter; Poisson prior; conditional independence assumption; data association prior; exponential complexity; linear complexity; measurement model; multitarget tracking algorithm; probabilistic multihypothesis tracker; track management decision; track quality measure; Clutter; Complexity theory; Hysteresis; Joints; Sensors; Standards; Target tracking;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2014.120633