Bimanual rope manipulation skill synthesis through context dependent correction policy learning from human demonstration
T. Baturhan Akbulut, G. Tuba C. Girgin, Arash Mehrabi, Minoru Asada,, Emre Ugur, Erhan Oztop

TL;DR
This paper introduces a method for improving bimanual rope manipulation skills in robots by learning context-dependent correction policies from human demonstrations, enhancing task success in complex, multi-step scenarios.
Contribution
It proposes a novel correction policy learning approach using CNMPs to ensure smooth transitions between motor primitives in robot skills.
Findings
Successful knotting in real-world experiments.
Enhanced task robustness with correction policies.
Effective handling of unseen correction cases.
Abstract
Learning from demonstration (LfD) provides a convenient means to equip robots with dexterous skills when demonstration can be obtained in robot intrinsic coordinates. However, the problem of compounding errors in long and complex skills reduces its wide deployment. Since most such complex skills are composed of smaller movements that are combined, considering the target skill as a sequence of compact motor primitives seems reasonable. Here the problem that needs to be tackled is to ensure that a motor primitive ends in a state that allows the successful execution of the subsequent primitive. In this study, we focus on this problem by proposing to learn an explicit correction policy when the expected transition state between primitives is not achieved. The correction policy is itself learned via behavior cloning by the use of a state-of-the-art movement primitive learning architecture,…
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Taxonomy
TopicsRobot Manipulation and Learning · Human Pose and Action Recognition · Robotic Locomotion and Control
