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Imitation Learning With Additional Constraints on Motion Style Using Parametric Bias

Kento Kawaharazuka, Yoichiro Kawamura, Kei Okada, Masayuki Inaba

发表年份
2021
引用次数
15

摘要

Imitation learning is one of the methods for reproducing human demonstration adaptively in robots. So far, it has been found that generalization ability of the imitation learning enables the robots to perform tasks adaptably in untrained environments. However, motion styles such as motion trajectory and the amount of force applied depend largely on the dataset of human demonstration, and settle down to an average motion style. In this study, we propose a method that adds parametric bias to the conventional imitation learning network and can add constraints to the motion style. By experiments using PR2 and the musculoskeletal humanoid MusashiLarm, we show that it is possible to perform tasks by changing its motion style as intended with constraints on joint velocity, muscle length velocity, and muscle tension.

关键词

ImitationMotion (physics)Computer scienceGeneralizationArtificial intelligenceTrajectoryRobotHumanoid robotStyle (visual arts)Computer vision

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