Panteris, M., Manschitz, S. and Calinon, S. (2020)
Learning, Generating and Adapting Wave Gestures for Expressive Human-Robot Interaction
In Proc. ACM/IEEE Intl Conf. on Human-Robot Interaction (HRI), pp. 386-388.
Abstract
This study proposes a novel imitation learning approach for the stochastic generation of human-like rhythmic wave gestures and their modulation for effective non-verbal communication through a probabilistic formulation using joint angle data from human demonstrations. This is achieved by learning and modulating the overall expression characteristics of the gesture (e.g., arm posture, waving frequency and amplitude) in the frequency domain. The method was evaluated on simulated robot experiments involving a robot with a manipulator of 6 degrees of freedom. The results show that the method provides efficient encoding and modulation of rhythmic movements and ensures variability in their execution.
Bibtex reference
@inproceedings{Panteris20, author = {Panteris, M. and Manschitz, S. and Calinon, S.}, title = {Learning, Generating and Adapting Wave Gestures for Expressive Human-Robot Interaction}, booktitle = {Proc.\ {ACM/IEEE} Intl Conf.\ on Human-Robot Interaction ({HRI})}, year = {2020}, pages = {386--388}, }