PT Journal AU Vogt, D Ben Amor, H Berger, E Jung, B TI Learning Two-Person Interaction Models for Responsive Synthetic Humanoids SO Journal of Virtual Reality and Broadcastings PY 2014 VL 11(2014) IS 1 DI 10.20385/1860-2037/11.2014.1 DE humanoid robots; imitation learning; interaction learning; motion adaptation; motor learning; virtual characters AB Imitation learning is a promising approach for generating life-like behaviors of virtual humans and humanoid robots. So far, however, imitation learning has been mostly restricted to single agent settings where observed motions are adapted to new environment conditions but not to the dynamic behavior of interaction partners. In this paper, we introduce a new imitation learning approach that is based on the simultaneous motion capture of two human interaction partners. From the observed interactions, low-dimensional motion models are extracted and a mapping between these motion models is learned. This interaction model allows the real-time generation of agent behaviors that are responsive to the body movements of an interaction partner. The interaction model can be applied both to the animation of virtual characters as well as to the behavior generation for humanoid robots. ER