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arxiv: 1006.3100 · v3 · pith:T7O5O5KZnew · submitted 2010-06-15 · 🧮 math.NA

A drift homotopy Monte Carlo approach to particle filtering for multi-target tracking

classification 🧮 math.NA
keywords approachparticlecarlodriftfilterhomotopymontemulti-target
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We present a novel approach for improving particle filters for multi-target tracking. The suggested approach is based on drift homotopy for stochastic differential equations. Drift homotopy is used to design a Markov Chain Monte Carlo step which is appended to the particle filter and aims to bring the particle filter samples closer to the observations. Also, we present a simple Metropolis Monte Carlo algorithm for tackling the target-observation association problem. We have used the proposed approach on the problem of multi-target tracking for both linear and nonlinear observation models. The numerical results show that the suggested approach can improve significantly the performance of a particle filter.

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