A geometric approach for learning compliant motions from demonstration
Markku Suomalainen, Ville Kyrki

TL;DR
This paper introduces a geometric method for learning compliant contact motions from human demonstrations, enabling robots to reproduce motions that leverage interaction forces using an impedance controller.
Contribution
The paper presents a novel geometric approach to learn compliant motions from demonstrations, inferring force directions and compliant axes for improved robot interaction.
Findings
Successfully reproduces motions exploiting environment interactions
Infers the number and directions of compliant axes
Works with unstructured and uncertain conditions
Abstract
This paper proposes a method to learn from human demonstration compliant contact motions, which take advantage of interaction forces between workpieces to align them, even when contact force may occur from different directions on different instances of reproduction. To manage the uncertainty in unstructured conditions, the motions learned with our method can be reproduced with an impedance controller. Learning from Demonstration is used because the planning of compliant motions in 3-D is computationally intractable. The proposed method will learn an individual compliant motion, many of which can be combined to solve more complex tasks. The method is based on measuring simultaneously the direction of motion and the forces acting on the end-effector. From these measurements we construct a set of constraints for motion directions which, with correct compliance, result in the observed…
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