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arxiv: 1203.2992 · v1 · pith:6EMN5YQAnew · submitted 2012-03-14 · 💻 cs.SY · cs.CV· cs.SY

Hybrid Poisson and multi-Bernoulli filters

classification 💻 cs.SY cs.CVcs.SY
keywords poissoncomponentcomponentsmulti-bernoullitargetsbernoullifiltersmethod
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The probability hypothesis density (PHD) and multi-target multi-Bernoulli (MeMBer) filters are two leading algorithms that have emerged from random finite sets (RFS). In this paper we study a method which combines these two approaches. Our work is motivated by a sister paper, which proves that the full Bayes RFS filter naturally incorporates a Poisson component representing targets that have never been detected, and a linear combination of multi-Bernoulli components representing targets under track. Here we demonstrate the benefit (in speed of track initiation) that maintenance of a Poisson component of undetected targets provides. Subsequently, we propose a method of recycling, which projects Bernoulli components with a low probability of existence onto the Poisson component (as opposed to deleting them). We show that this allows us to achieve similar tracking performance using a fraction of the number of Bernoulli components (i.e., tracks).

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