Abstract:
We address the problem of learning robust plans for robot navigation by observing particular robot behaviors. In this paper we present a method which can learn a robust reactive plan from a single example of a desired behavior. The system operates by translating a sequence of events arising from the eflector system into a plan which represents the dependencies among such events. This method allows us to rely on the underlying stability properties of low-level behavior processes in order to produce robust plans. Since the resultant plan reproduces the original behavior of the robot at a high level, it generalizes over small environmental changes and is robust to sensor and eflector noise.
Registration: ISBN 978-0-262-51091-2