Optimizing Particle Filter Parameters for Self-Localization
Armin Burchardt, Tim Laue, Thomas Röfer
Editors: Javier Ruiz-del-Solar, Eric Chown, Paul G. Ploeger
In RoboCup 2010: Robot Soccer World Cup XIV, (RoboCup-2010), 19.6.-25.6.2010, Singapore, Springer, series Lecture Notes in Artificial Intelligence, volume 6556, pages 145-156, 2011.
Particle filter-based approaches have proven to be capable of efficiently solving the self-localization problem in RoboCup scenarios and are therefore applied by many participating teams. Nevertheless, they require a proper parametrization - for sensor models and dynamic models as well as for the configuration of the algorithm - to operate reliably. In this paper, we present an approach for optimizing all relevant parameters by using the Particle Swarm Optimization algorithm. The approach has been applied to the self-localization component of a Standard Platform League team and shown to be capable of finding a parameter set that leads to more precise position estimates than the previously used hand-tuned parametrization.