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12 - Sequential inference for dynamically evolving groups of objects

from IV - Multi-object models

Published online by Cambridge University Press:  07 September 2011

Sze Kim Pang
Affiliation:
University of Cambridge
Simon J. Godsill
Affiliation:
University of Cambridge
Jack Li
Affiliation:
University of Cambridge
François Septier
Affiliation:
Institut TELECOM/TELECOM Lille
Simon Hill
Affiliation:
University of Cambridge
David Barber
Affiliation:
University College London
A. Taylan Cemgil
Affiliation:
Boğaziçi Üniversitesi, Istanbul
Silvia Chiappa
Affiliation:
University of Cambridge
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Summary

Introduction

In nature there are many examples of group behaviour arising from the action of individuals without any apparent central coordinator, such as the highly coordinated movements of flocks of birds or schools of fish. These are among the most fascinating phenomena to be found in nature; where the groups seem to turn and manoeuvre as a single unit, changing direction almost instantaneously. Similarly, in man-made activities, there are many cases of group-like behaviour, such as a group of aircraft flying in formation.

There are two principal reasons why it is very helpful to model the behaviour of groups explicitly, as opposed to treating all objects independently as in most multiple target tracking approaches. The first is that the joint tracking of (a priori) dependent objects within a group will lead to greater detection and tracking ability in hostile environments with high noise and low detection probabilities. For example, in the radar target tracking application, if several targets are in a group formation, then some information on the positions and speeds of those targets with missing measurements (due to poor detection probability) can be inferred given those targets that are detected. Similarly, if a newly detected target appears close to an existing group, the target can be initialised using the group velocity.

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Publisher: Cambridge University Press
Print publication year: 2011

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