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A Non-Linear Manifold Alignment Approach to Robot Learning from Demonstrations

机译:从演示中获得机器人的非线性歧管对准方法

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The number and variety of robots active in real-world environments are growing, as well as the skills they are expected to acquire, and to this end we present an approach for non-robotics-expert users to be able to easily teach a skill to a robot with potentially different, but unknown, kinematics from humans. This paper proposes a method that enables robots with unknown kinematics to learn skills from demonstrations. Our proposed method requires a motion trajectory obtained from human demonstrations via a vision-based system, which is then projected onto a corresponding human skeletal model. The kinematics mapping between the robot and the human model is learned by employing Local Procrustes Analysis, a manifold alignment technique which enables the transfer of the demonstrated trajectory from the human model to the robot. Finally, the transferred trajectory is encoded onto a parameterized motion skill, using Dynamic Movement Primitives, allowing it to be generalized to different situations. Experiments in simulation on the PR2 and Meka robots show that our method is able to correctly imitate various skills demonstrated by a human, and an analysis of the transfer of the acquired skills between the two robots is provided.
机译:在现实世界环境中活跃的机器人的数量和种类正在增加,以及它们预期获得的技能,为此,我们为非机器人专家用户提供了一种方法,使他们能够轻松地将一项技能传授给一个可能与人类不同但未知运动学的机器人。本文提出了一种方法,使未知运动学的机器人从演示中学习技能。我们提出的方法需要通过基于视觉的系统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。机器人和人体模型之间的运动学映射是通过使用局部Procrustes分析来学习的,这是一种流形对齐技术,能够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,将转移的轨迹编码到参数化运动技能上,使其可以推广到不同的情况。在PR2和Meka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展示的各种技能,并对两个机器人之间获得的技能的转移进行了分析。

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