Classifying an opponent’s behaviour in robot soccer


Autoria(s): Ball, David; Wyeth, Gordon
Contribuinte(s)

Roberts, Jonathan

Wyeth, Gordon

Data(s)

2003

Resumo

This paper illustrates the prediction of opponent behaviour in a competitive, highly dynamic, multi-agent and partially observable environment, namely RoboCup small size league robot soccer. The performance is illustrated in the context of the highly successful robot soccer team, the RoboRoos. The project is broken into three tasks; classification of behaviours, modelling and prediction of behaviours and integration of the predictions into the existing planning system. A probabilistic approach is taken to dealing with the uncertainty in the observations and with representing the uncertainty in the prediction of the behaviours. Results are shown for a classification system using a Naïve Bayesian Network that determines the opponent’s current behaviour. These results are compared to an expert designed fuzzy behaviour classification system. The paper illustrates how the modelling system will use the information from behaviour classification to produce probability distributions that model the manner with which the opponents perform their behaviours. These probability distributions are show to match well with the existing multi-agent planning system (MAPS) that forms the core of the RoboRoos system.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/32821/

Publicador

Australian Robotics and Automation Association Inc

Relação

http://eprints.qut.edu.au/32821/1/c32821.pdf

http://www.araa.asn.au/acra/acra2003/papers/53.pdf

Ball, David & Wyeth, Gordon (2003) Classifying an opponent’s behaviour in robot soccer. In Roberts, Jonathan & Wyeth, Gordon (Eds.) Proceedings of the Australasian Conference on Robotics and Automation, 2003, Australian Robotics and Automation Association Inc, Brisbane, Queensland.

Direitos

Copyright 2003 [please consult the authors]

Palavras-Chave #080101 Adaptive Agents and Intelligent Robotics
Tipo

Conference Paper