DocumentCode
1484149
Title
An Optimization-Based Parallel Particle Filter for Multitarget Tracking
Author
Sutharsan, S. ; Kirubarajan, T. ; Lang, Tom ; McDonald, Mike
Author_Institution
McMaster Univ., Hamilton, ON, Canada
Volume
48
Issue
2
fYear
2012
fDate
4/1/2012 12:00:00 AM
Firstpage
1601
Lastpage
1618
Abstract
Particle filters are used in state estimation applications because of their capability to solve nonlinear and non-Gaussian problems effectively. However, they have high computational requirements, especially in the case of multitarget tracking, where data association is the bottleneck. In order to perform data association and estimation together, an augmented state vector, whose dimensions depend on the number of targets, is typically used in particle filters. With data association, the computational load increases exponentially as the number of targets increases. In this case, parallelization is a possibility for achieving real-time feasibility in large-scale multitarget tracking applications. In the work presented here, an optimization-based scheduling algorithm, that is suitable for parallel implementation of particle filter, is presented. This proposed scheduling algorithm minimizes the total computation time for the bus-connected heterogeneous primary-secondary architecture. Further, this scheduler is capable of selecting the optimal number of processors from a large pool of secondary processors and mapping the particles among the selected ones. A new distributed resampling algorithm suitable for parallel computing is also proposed. Furthermore, a less communication-intensive parallel implementation of the particle filter without compromising tracking accuracy using an efficient load balancing technique, in which optimal particle migration among secondary processors is ensured, is presented. Simulation results demonstrate the tracking effectiveness of the new parallel particle filter and the speedup achieved using parallelization.
Keywords
optimisation; particle filtering (numerical methods); resource allocation; scheduling; sensor fusion; state estimation; target tracking; vectors; augmented state vector; bus-connected heterogeneous primary-secondary architecture; communication-intensive parallel implementation; data association; data estimation; distributed resampling algorithm; large-scale multitarget tracking application; load balancing technique; nonGaussian problem; nonlinear problem; optimal particle migration; optimization-based parallel particle filter; optimization-based scheduling algorithm; parallel computing; particle mapping; particle secondary processor; state estimation application; Algorithm design and analysis; Computer architecture; Particle filters; Program processors; Real-time systems; Target tracking;
fLanguage
English
Journal_Title
Aerospace and Electronic Systems, IEEE Transactions on
Publisher
ieee
ISSN
0018-9251
Type
jour
DOI
10.1109/TAES.2012.6178081
Filename
6178081
Link To Document