Learning to Select and Generalize Striking Movements in Robot Table Tennis

Muelling, Katharina (Max Planck Institute for Intelligent Systems) | Kober, Jens (Max Planck Institute for Intelligent Systems) | Kroemer, Oliver (Technische Universitaet Darmstadt) | Peters, Jan (Technische Universitaet Darmstadt)

AAAI Conferences 

Learning new motor tasks autonomously from interaction with a human being is an important goal for both robotics and machine learning. However, when moving beyond basic skills, most monolithic machine learning approaches fail to scale. In this paper, we take the task of learning table tennis as an example and present a new framework which allows a robot to learn cooperative table tennis from interaction with a human. Therefore, the robot first learns a set of elementary table tennis hitting movements from a human teacher by kinesthetic teach-in, which is compiled into a set of dynamical system motor primitives (DMPs). Subsequently, the system generalizes these movements to a wider range of situations using our mixture of motor primitives (MoMP) approach. The resulting policy enables the robot to select appropriate motor primitives as well as to generalize between them. Finally, the robot plays with a human table tennis partner and learns online to improve its behavior.

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