Virtual Reality Teleoperation of a Humanoid Robot Using Markerless Human Upper Body Pose Imitation

Matthias Hirschmanner, Christiana Tsiourti, T. Patten, M. Vincze
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引用次数: 13

Abstract

Teleoperation of robots with traditional input devices (joysticks, keyboard, etc.) is often difficult and cumbersome especially for novice users. We introduce an intuitive virtual reality (VR) based teleoperation system for humanoid robots that imitates the user's upper body pose. We present an algorithm to directly calculate the robot's joint angles from the teleoperator's arm poses using the Leap Motion Controller and a comfortable VR environment for visual feedback. The intuitiveness of the system is tested with 21 novice users performing two object manipulation tasks and compared with kinesthetic guidance which is a popular alternative to teleoperation for Learning from Demonstration (LfD). The majority of the users preferred our teleoperation system overall for both tasks, stating it was easier to learn. Users also showed objective performance improvement for one task in particular, exhibiting lower task duration. A video of the working system can be found at http://hirschmanner.com/teleoperation.
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基于无标记人上身姿态模仿的仿人机器人的虚拟现实遥操作
使用传统的输入设备(操纵杆、键盘等)对机器人进行远程操作通常是困难和繁琐的,特别是对新手来说。我们介绍了一种直观的基于虚拟现实(VR)的仿人机器人远程操作系统,该系统模仿用户的上半身姿势。本文提出了一种利用Leap运动控制器和舒适的虚拟现实环境进行视觉反馈,从远程操作者的手臂姿势直接计算机器人关节角度的算法。该系统的直观性测试了21个新手用户执行两个对象操作任务,并与动觉指导进行了比较,动觉指导是远程操作的一种流行的替代方案。对于这两个任务,大多数用户更喜欢我们的远程操作系统,表示它更容易学习。用户还在一个特定任务上表现出客观的性能改善,表现出更短的任务持续时间。可以在http://hirschmanner.com/teleoperation上找到工作系统的视频。
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