Distributed Bernoulli Filtering for Target Detection and Tracking Based on Arithmetic Average Fusion

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Abstract

We present a distributed Bernoulli filter for tracking a target that may be present or absent in the cluttered surveillance area in unknown time intervals by using a decentralized sensor network. As a key feature of the Bernoulli filter, a parameter referring to the target existence probability is online updated jointly with the target state probability density function. We propose to fuse them in parallel, both in an arithmetic average fusion manner via the standard consensus or flooding scheme. Alternatively, one may communicate and fuse merely target existence probabilities, leading to a communication-inexpensive protocol. We experimentally compare the proposed approaches, based on the Gaussian mixture implementation of the Bernoulli filter, with the cutting-edge geometric average fusion approach based on a Doppler shift sensor network. Advantages are observed in computing efficiency and in dealing with local missed detection.

Original languageEnglish
Article number8889378
Pages (from-to)1812-1816
Number of pages5
JournalIEEE Signal Processing Letters
Volume26
Issue number12
DOIs
StatePublished - Dec 2019

Keywords

  • arithmetic average
  • Bernoulli filter
  • consensus
  • Distributed tracking
  • Doppler shift sensor network
  • flooding

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