Multitarget Tracking with Multiscan Knowledge Exploitation using Sequential MCMC Sampling
Exploitation of external knowledge through constrained filtering guarantees improved performance. In this paper
we show how multiscan processing of such information further enhances the track accuracy. This can be achieved using a Fixed-
Lag Smoothing procedure, and a proof of improvement is given in terms of entropy reduction.
Such multiscan algorithm, i.e. named KB-Smoother [1], can be implemented by means of a SIR-PF. In practice, the SIRPF
suffers from depletion problems, which are further amplified by the Smoothing technique. Sequential MCMC methods represent
an efficient alternative to the standard SIR-PF approach.
Furthermore, by borrowing techniques from genetic algorithms, a fully parallelizable multitarget tracker can be defined. Such
approach, i.e. named Interacting Population (IP)-MCMC-PF, was first introduced in [2].
In this paper, we propose and analyze a combination of the KB-Smoother along with the IP-MCMC-PF. As will be
shown, the combination of the two methods yields an improved track accuracy while mitigating the loss of particles diversity.
Simulation analyses for single and multitarget tracking scenarios confirm the benefits of the proposed approach.
BOCQUEL Mélanie;
PAPI Francesco;
PODT Martin;
DRIESSEN Hans;
2013-06-27
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
JRC80426
1932-4553,
http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=6473818,
https://publications.jrc.ec.europa.eu/repository/handle/JRC80426,
10.1109/JSTSP.2013.2251317,
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