DocumentCode :
1495293
Title :
Hybrid Algorithms for Multitarget Tracking using MHT and GM-CPHD
Author :
Pollard, Evangeline ; Pannetier, Benjamin ; Rombaut, Michele
Author_Institution :
Dept. of Modeling & Inf. Process., ONERA, Chatillon, France
Volume :
47
Issue :
2
fYear :
2011
fDate :
4/1/2011 12:00:00 AM
Firstpage :
832
Lastpage :
847
Abstract :
The Gaussian mixture cardinalized probability hypothesis density (GM-CPHD) is a new original algorithm for multitarget tracking adapted to false alarms, nondetection and closely spaced objects. It models the target set as a random finite set (RFS) and estimates the target state as the first-order moment of a joint probability distribution. In the classical version no track assignment is implemented; this is a limit to scene understanding in a multitarget context. A technique for choosing the peak to track association is therefore proposed. With this implementation the main strength of the GM-CPHD is shown: it drastically improves the performances concerning the estimation of the number of targets and gives acceptable performances concerning the state of each individual target even if targets are close together, but it cannot rival an interacting multiple model estimator with multiple hypothesis tracking (IMM-MHT) in regards to velocity estimation, which is also the case with other multitarget tracking algorithms not equiped with IMM. However, MHT performance decreases due to poor estimation of the number of targets when targets are close together. It is worth noting that combining a probability hypothesis density (PHD) filter with a multiple-model approach should improve the velocity estimation but is unnecessary because we have developed a hybrid algorithm, combining the precision of the estimation of the number of targets given by the GM-CPHD, used in a labeled version, with the precision of the estimation of each individual state given by the MHT. These noteworthy performances can be observed for individual targets as well as for convoys. This hybrid algorithm is extended by using an IMM-MHT with road constraints.
Keywords :
Gaussian processes; filtering theory; object detection; statistical distributions; target tracking; GM-CPHD; Gaussian mixture cardinalized probability hypothesis density; IMM-MHT; PHD filter; RFS; hybrid algorithms; interacting multiple model estimator with multiple hypothesis tracking; joint probability distribution; multitarget tracking algorithm; probability hypothesis density filter; random finite set; velocity estimation; Estimation; Filtering algorithms; Joints; Labeling; Probability; Target tracking; Weight measurement;
fLanguage :
English
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9251
Type :
jour
DOI :
10.1109/TAES.2011.5751229
Filename :
5751229
Link To Document :
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