A proof of uniform convergence over time for a distributed particle filter

Distributed signal processing algorithms have become a hot topic during the past years. One class of algorithms that have received special attention are particles filters (PFs). However, most distributed PFs involve various heuristic or simplifying approximations and, as a consequence, classical con...

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Veröffentlicht in:Signal processing 2016-05, Vol.122, p.152-163
Hauptverfasser: Miguez, Joaquin, Vazquez, Manuel A
Format: Artikel
Sprache:eng
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Zusammenfassung:Distributed signal processing algorithms have become a hot topic during the past years. One class of algorithms that have received special attention are particles filters (PFs). However, most distributed PFs involve various heuristic or simplifying approximations and, as a consequence, classical convergence theorems for standard PFs do not hold for their distributed counterparts. In this paper, we analyze a distributed PF based on the non-proportional weight-allocation scheme of Bolic et al (2005) and prove rigorously that, under certain stability assumptions, its asymptotic convergence is guaranteed uniformly over time, in such a way that approximation errors can be kept bounded with a fixed computational budget. To illustrate the theoretical findings, we carry out computer simulations for a target tracking problem. The numerical results show that the distributed PF has a negligible performance loss (compared to a centralized filter) for this problem and enable us to empirically validate the key assumptions of the analysis. •Rigorous analysis of a distributed particle filter based on a parallel resampling scheme of Bolic et al. (2005).•Proof of uniform convergence over time.•Analysis of the convergence rates.•A numerical study that complements the analytical results for a target tracking problem.
ISSN:0165-1684
1872-7557
DOI:10.1016/j.sigpro.2015.11.015