Behaviour Generation in Humanoids by Learning Potential-based Policies from Constrained Motion
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Abstract
Movement generation that is consistent with observed or demonstrated behaviour is an efficient way to seed movement
planning in complex, high-dimensionalmovement systems like humanoid robots.We present a method for learning potentialbased
policies from constrained motion data. In contrast to previous approaches to direct policy learning, our method can
combine observations from a variety of contexts where different constraints are in force, to learn the underlying unconstrained
policy in form of its potential function. This allows us to generalise and predict behaviour where novel constraints apply.
We demonstrate our approach on systems of varying complexity, including kinematic data from the ASIMO humanoid robot
with 22 degrees of freedom.
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