Jankowski, J., Racca, M. and Calinon, S. (2022)
From Key Positions to Optimal Basis Functions for Probabilistic Adaptive Control
IEEE Robotics and Automation Letters (RA-L), 7:2, 3242-3249.

Abstract

In the field of Learning from Demonstration (LfD), movement primitives learned from full trajectories provide mechanisms to generalize a demonstrated skill to unseen situations. Key position demonstrations, requiring the user to provide only a sequence of via-points rather than a complete trajectory, have been shown to be an appealing alternative. In this letter, we investigate the synergy between learning adaptive movement primitives and key position demonstrations. We exploit a linear optimal control formulation to (1) recover the timing information of the skill missing from key position demonstrations, and to (2) infer low-effort movements on-the-fly. We evaluate the performance of the proposed approach in a user study where 16 novice users taught a 7-DoF robot manipulator, showing improved learning efficiency and trajectory smoothness. We further showcase the effectiveness of the approach for tasks that require precise demonstrations and on-the-fly movement adaptation.

Bibtex reference

@article{Jankowski22RAL,
	author="Jankowski, J. and Racca, M. and Calinon, S.",
	title="From Key Positions to Optimal Basis Functions for Probabilistic Adaptive Control",
	year="2022",
	journal="{IEEE} Robotics and Automation Letters ({RA-L})",
	volume="7",
	number="2",
	pages="3242--3249",
	doi="10.1109/LRA.2022.3146614"
}

Video

Related publication: Jankowski, J., Racca, M. and Calinon, S. (2022). From Key Positions to Optimal Basis Functions for Probabilistic Adaptive Control. IEEE Robotics and Automation Letters (RA-L), 7:2, 3242-3249.

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