Probabilistic Decision Making in Robot Soccer
Abstract
Decision making is an important issue in robot soccer, which has not
been investigated deeply enough by the RoboCup research community. This
paper proposes a probabilistic approach to decision making. The proposed
methodology is based on the maximization of a game situation score function,
which generalizes the concept of accomplishing different game objectives as:
passing, scoring a goal, clearing the ball, etc. The methodology includes a
quantitative method for evaluating the game situation score. Experimental
results in a high-level strategy simulator, which runs our four-legged code in
simulated AIBOs’ robots, show a noticeable improvement in the scoring
effectiveness achieved by a team that uses the proposed approach for making
decisions.
Patrocinador
This research was partially supported by FONDECYT (Chile) under Project Number 1061158.
Identifier
URI: https://repositorio.uchile.cl/handle/2250/125693
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