Community webpage

PbD publications

PbD links

PbD blog

Archives

February 2010

Categories

Announcements (2)

Login

Register Log in


Personal webpages

Sylvain Calinon

Recent updates

Research

Publications

Book

Curriculum Vitae

Videos

Sourcecodes

Contact & credits

 

Information on a publication

Title

Stochastic Gesture Production and Recognition Model for a Humanoid Robot

Authors

Calinon, S. and Billard, A.

Year of publication

2004

Place of publication

In Proceedings of the IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), pp. 2769-2774.

  Download the publication in a PDF format



Robot Programming by Demonstration (PbD) aims at developing adaptive and robust controllers to enable the robot to learn new skills by observing and imitating a human demonstration.
While the vast majority of PbD works focused on systems that learn a specific subset of tasks, our work explores the problem of recognition, generalization, and reproduction of tasks in a unified mathematical framework. The approach makes abstraction of the task and dataset at hand to tackle the general issue of learning which of the features are the relevant ones to imitate. In this paper, we present an implementation of this framework to the determination of the optimal strategy to reproduce arbitrary gestures. The model is tested and validated on a humanoid robot, using recordings of the kinematics of the demonstrator's arm motion. The hand path and joint angle trajectories are encoded in Hidden Markov Models. The system uses the optimal prediction of the models to generate the reproduction of the motion.


@InProceedings{Calinon04,
author="S. Calinon and A. Billard", title="Stochastic Gesture Production and Recognition Model for a Humanoid Robot",
booktitle="Proceedings of the {IEEE/RSJ} international Conference on Intelligent Robots and Systems ({IROS})",
year="2004",
month="September",
pages="2769--2774",
location="Sendai, Japan"
}