Abstract

We consider self-localisation of networked sensor platforms, which are located disparately and collect cluttered and noisy measurements from an unknown number of objects (or, targets). These nodes perform local filtering of their measurements and exchange posterior densities of object states over the network to improve upon their myopic performance. Sensor locations need to be known, however, in order to register the incoming information in a common coordinate frame for fusion. In this work, we are interested in scenarios in which these locations need to be estimated solely based on the multi-object scene. We propose a cooperative scheme which features nodes using only the information they already receive for distributed fusion: we first introduce node-wise separable parameter likelihoods for sensor pairs, which are recursively updated using the incoming multi-object information and the local measurements. Second, we establish a network coordinate system through a pairwise Markov random field model which has the introduced likelihoods as its edge potentials. The resulting algorithm consists of consecutive edge potential updates and Belief Propagation message passing operations. These potentials are capable of incorporating multi-object information without the need to find explicit object-measurement associations and updated in linear complexity with the number of measurements. We demonstrate the efficacy of our algorithm through simulations with multiple objects and complex measurement models.

Highlights

  • F USION networks comprised of geographically dispersed and networked sensor platforms are one of the key enablers of wide area surveillance applications

  • The nodes locally filter their measurements to estimate the object trajectories. They exchange the filtered distributions with other nodes over the network to improve upon the accuracy they achieve myopically based on only their local measurements(e.g., [3])

  • We are interested in finding the minimum mean squared error (MMSE) estimate of θ based on this posterior4

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Summary

A Cooperative Approach to Sensor Localisation in Distributed Fusion Networks

Abstract—We consider self-localisation of networked sensor platforms which are located disparately and collect cluttered and noisy measurements from an unknown number of objects (or, targets). These nodes perform local filtering of their measurements and exchange posterior densities of object states over the network to improve upon their myopic performance. The resulting algorithm consists of consecutive edge potential updates and Belief Propagation message passing operations. These potentials are capable of incorporating multi-object information without the need to find explicit objectmeasurement associations and updated in linear complexity with the number of measurements.

INTRODUCTION
PROBLEM STATEMENT
Centralised sensor calibration
Distributed fusion architecture and information exchange
A DYNAMIC PAIRWISE MARKOV RANDOM FIELD MODEL FOR CALIBRATION
Decentralised Estimation Using Belief Propagation
NODE-WISE SEPARABLE EDGE POTENTIALS
THE COOPERATIVE CALIBRATION SCHEME
13: Find ψikj for j P nepiq
COOPERATIVE SENSOR SELF-LOCALISATION USING MONTE CARLO METHODS
EXAMPLE
VIII. CONCLUSION
Findings
Marginalisation of RFS variables
Full Text
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