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Imitation Learning Based on Bilateral Control for Human–Robot Cooperation

Ayumu Sasagawa, Kazuki Fujimoto, Sho Sakaino, Toshiaki Tsuji

2020IEEE Robotics and Automation Letters55 citationsDOIOpen Access PDF

Abstract

Robots are required to autonomously respond to changing situations. Imitation learning is a promising candidate for achieving generalization performance, and extensive results have been demonstrated in object manipulation. However, cooperative work between humans and robots is still a challenging issue because robots must control dynamic interactions among themselves, humans, and objects. Furthermore, it is difficult to follow subtle perturbations that may occur among coworkers. In this study, we find that cooperative work can be accomplished by imitation learning using bilateral control. Thanks to bilateral control, which can extract response values and command values independently, human skills to control dynamic interactions can be extracted. Then, the task of serving food is considered. The experimental results clearly demonstrate the importance of force control, and the dynamic interactions can be controlled by the inferred action force.

Topics & Concepts

ImitationRobotGeneralizationTask (project management)Action (physics)Control (management)Object (grammar)Computer scienceArtificial intelligenceCognitive imitationWork (physics)Task analysisHuman–computer interactionReinforcement learningHuman–robot interactionPsychologyRobot controlRoboticsRobot learningMachine learningCognitive psychologyRobot Manipulation and LearningMotor Control and AdaptationAction Observation and Synchronization
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