Trajectory learning from human demonstrations via manifold mapping

Michihisa Hiratsuka, Ndivhuwo Makondo, Benjamin Rosman, O. Hasegawa
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引用次数: 6

Abstract

This work proposes a framework that enables arbitrary robots with unknown kinematics models to imitate human demonstrations to acquire a skill, and reproduce it in real-time. The diversity of robots active in non-laboratory environments is growing constantly, and to this end we present an approach for users to be able to easily teach a skill to a robot with any body configuration. Our proposed method requires a motion trajectory obtained from human demonstrations via a Kinect sensor, which is then projected onto a corresponding human skeleton model. The kinematics mapping between the robot and the human model is learned by employing Local Procrustes Analysis, which enables the transfer of the demonstrated trajectory from the human model to the robot. Finally, the transferred trajectory is modeled using Dynamic Movement Primitives, allowing it to be reproduced in real time. Experiments in simulation on a 4 degree of freedom robot show that our method is able to correctly imitate various skills demonstrated by a human.
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轨迹学习从人类演示通过流形映射
这项工作提出了一个框架,使具有未知运动学模型的任意机器人能够模仿人类演示以获得技能,并实时再现它。在非实验室环境中活动的机器人的多样性正在不断增长,为此,我们提出了一种方法,使用户能够轻松地向任何身体配置的机器人教授技能。我们提出的方法需要通过Kinect传感器从人体演示中获得运动轨迹,然后将其投影到相应的人体骨骼模型上。通过局部Procrustes分析学习机器人和人体模型之间的运动学映射,从而将演示的轨迹从人体模型转移到机器人。最后,使用动态运动原语对转移的轨迹进行建模,使其能够实时再现。在一个四自由度机器人上的仿真实验表明,我们的方法能够正确地模仿人类所展示的各种技能。
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