Title :
Heterogeneous Imitation Learning from Demonstrators of Varying Physiology and Skill
Author :
Allen, Jeff ; Anderson, John
Author_Institution :
Dept. of Comput. Sci., Univ. of Manitoba, Winnipeg, MB, Canada
Abstract :
Imitation learning enables a learner to improve its abilities by observing others. Most robotic imitation learning systems only learn from demonstrators that are homogeneous physiologically (i.e. the same size and mode of locomotion) and in terms of skill level. To successfully learn from physically heterogeneous robots that may also vary in ability, the imitator must be able to abstract behaviours it observes and approximate them with its own actions, which may be very different than those of the demonstrator. This paper describes an approach to imitation learning from heterogeneous demonstrators, using global vision for observations. It supports learning from physiologically different demonstrators (wheeled and legged, of various sizes), and self-adapts to demonstrators with varying levels of skill. The latter allows a bias toward demonstrators that are successful in the domain, but also allows different parts of a task to be learned from different individuals (that is, worthwhile parts of a task can still be learned from a poorly-performing demonstrator). We assume the imitator has no initial knowledge of the observable effects of its own actions, and train a set of Hidden Markov Models to map observations to actions and create an understanding of the imitator´s own abilities. We then use a combination of tracking sequences of primitives and predicting future primitives from existing combinations using forward models to learn abstract behaviours from the demonstrations of others. This approach is evaluated using a group of heterogeneous robots that have been previously used in RoboCup soccer competitions.
Keywords :
control engineering computing; hidden Markov models; learning (artificial intelligence); physiology; robot vision; RoboCup soccer competition; global vision; heterogeneous demonstrator; heterogeneous imitation learning; heterogeneous robot; hidden Markov model; physiology; robotic imitation learning system; skill level; tracking sequence; Hidden Markov models; Mathematical model; Mobile robots; Predictive models; Training; Visualization; Heterogeneous Learning; Hidden Markov Models; Imitation Learning; Multi-Robot Learning; physiology; skill;
Conference_Titel :
Machine Learning and Applications (ICMLA), 2010 Ninth International Conference on
Conference_Location :
Washington, DC
Print_ISBN :
978-1-4244-9211-4
DOI :
10.1109/ICMLA.2010.23