Multitarget tracking using probability hypothesis density smoothing

In general, for multitarget problems where the number of targets and their states are time varying, the optimal Bayesian multitarget tracking is computationally demanding. The Probability Hypothesis Density (PHD) filter, which is the first-order moment approximation of the optimal one, is a computat...

Full description

Bibliographic Details
Main Authors: Nadarajah, Nandakumaran, Kirubarajan, T., Lang, T., McDonald, M., Punithakumar, K.
Format: Journal Article
Published: 2011
Online Access:http://hdl.handle.net/20.500.11937/17753
_version_ 1848749548248236032
author Nadarajah, Nandakumaran
Kirubarajan, T.
Lang, T.
McDonald, M.
Punithakumar, K.
author_facet Nadarajah, Nandakumaran
Kirubarajan, T.
Lang, T.
McDonald, M.
Punithakumar, K.
author_sort Nadarajah, Nandakumaran
building Curtin Institutional Repository
collection Online Access
description In general, for multitarget problems where the number of targets and their states are time varying, the optimal Bayesian multitarget tracking is computationally demanding. The Probability Hypothesis Density (PHD) filter, which is the first-order moment approximation of the optimal one, is a computationally tractable alternative. By evaluating the PHD, the number of targets as well as their individual states can be extracted. Recent sequential Monte Carlo (SMC) implementations of the PHD filter have paved the way to its application to realistic nonlinear non-Gaussian problems. It is observed that the particle implementation of the PHD filter is dependent on current measurements, especially in the case of low observable target problems (i.e., estimates are sensitive to missed detections and false alarms). In this paper a PHD smoothing algorithm is proposed to improve the capability of PHD-based tracking system. It involves forward multitarget filtering using the standard PHD filter recursion followed by backward smoothing recursion using a novel recursive formula. Smoothing, which produces delayed estimates, results in better estimates for target states and a better estimate for the number of targets. Multiple model PHD (MMPHD) smoothing, which is an extension of the proposed technique to maneuvering targets, is also provided. Simulations are performed with the proposed method on a multitarget scenario. Simulation results confirm improved performance of the proposed algorithm. © 2011 IEEE.
first_indexed 2025-11-14T07:22:41Z
format Journal Article
id curtin-20.500.11937-17753
institution Curtin University Malaysia
institution_category Local University
last_indexed 2025-11-14T07:22:41Z
publishDate 2011
recordtype eprints
repository_type Digital Repository
spelling curtin-20.500.11937-177532017-09-13T15:44:15Z Multitarget tracking using probability hypothesis density smoothing Nadarajah, Nandakumaran Kirubarajan, T. Lang, T. McDonald, M. Punithakumar, K. In general, for multitarget problems where the number of targets and their states are time varying, the optimal Bayesian multitarget tracking is computationally demanding. The Probability Hypothesis Density (PHD) filter, which is the first-order moment approximation of the optimal one, is a computationally tractable alternative. By evaluating the PHD, the number of targets as well as their individual states can be extracted. Recent sequential Monte Carlo (SMC) implementations of the PHD filter have paved the way to its application to realistic nonlinear non-Gaussian problems. It is observed that the particle implementation of the PHD filter is dependent on current measurements, especially in the case of low observable target problems (i.e., estimates are sensitive to missed detections and false alarms). In this paper a PHD smoothing algorithm is proposed to improve the capability of PHD-based tracking system. It involves forward multitarget filtering using the standard PHD filter recursion followed by backward smoothing recursion using a novel recursive formula. Smoothing, which produces delayed estimates, results in better estimates for target states and a better estimate for the number of targets. Multiple model PHD (MMPHD) smoothing, which is an extension of the proposed technique to maneuvering targets, is also provided. Simulations are performed with the proposed method on a multitarget scenario. Simulation results confirm improved performance of the proposed algorithm. © 2011 IEEE. 2011 Journal Article http://hdl.handle.net/20.500.11937/17753 10.1109/TAES.2011.6034637 restricted
spellingShingle Nadarajah, Nandakumaran
Kirubarajan, T.
Lang, T.
McDonald, M.
Punithakumar, K.
Multitarget tracking using probability hypothesis density smoothing
title Multitarget tracking using probability hypothesis density smoothing
title_full Multitarget tracking using probability hypothesis density smoothing
title_fullStr Multitarget tracking using probability hypothesis density smoothing
title_full_unstemmed Multitarget tracking using probability hypothesis density smoothing
title_short Multitarget tracking using probability hypothesis density smoothing
title_sort multitarget tracking using probability hypothesis density smoothing
url http://hdl.handle.net/20.500.11937/17753