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Data-efficient learning of robotic clothing assistance using Bayesian Gaussian process latent variable model

Nishanth Koganti, Tomohiro Shibata, Tomoya Tamei, Kazushi Ikeda

发表年份
2019
引用次数
12

摘要

Motor-skill learning for complex robotic tasks is a challenging problem due to the high task variability. Robotic clothing assistance is one such challenging problem that can greatly improve the quality-of-life for the elderly and disabled. In this study, we propose a data-efficient representation to encode task-specific motor-skills of the robot using Bayesian nonparametric latent variable models. The effectivity of the proposed motor-skill representation is demonstrated in two ways: (1) through a real-time controller that can be used as a tool for learning from demonstration to impart novel skills to the robot and (2) by demonstrating that policy search reinforcement learning in such a task-specific latent space outperforms learning in the high-dimensional joint configuration space of the robot. We implement our proposed framework in a practical setting with a dual-arm robot performing clothing assistance tasks.

关键词

Artificial intelligenceReinforcement learningComputer scienceTask (project management)Latent variableMachine learningRobotProcess (computing)Gaussian processRepresentation (politics)

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