首页> 外文会议>IEEE International Conference on Robot and Human Interactive Communication >Training Human Teacher to Improve Robot Learning from Demonstration: A Pilot Study on Kinesthetic Teaching
【24h】

Training Human Teacher to Improve Robot Learning from Demonstration: A Pilot Study on Kinesthetic Teaching

机译:培训人类教师以提高机器人学习的示范性:动觉教学的初步研究

获取原文

摘要

Robot Learning from Demonstration (LfD) allows robots to implement autonomous manipulation by observing the movements executed by a demonstrator. As such, LfD has been established as a key element for useful user interactions in everyday environments. Kinesthetic teaching, a teaching technique within LfD, entails physically guiding the robot to achieve a task. When demonstrating complex actions on a multi-DoF manipulator, novice users typically encounter difficulties with trajectory continuity and joint orientation, necessitating training by an expert. A comparison between different training approaches is conducted in a study of nine novice users. These approaches are kinesthetic, observational and discovery-learning. The kinesthetic method utilizes record and playback functions implemented on a 7-DoF Barrett Technology WAM robot. A novice user passively holds the arm while an expert’s trajectory is replayed. A visual demonstration by the expert is used for the observational training group. The discovery-learning group does not receive an expert demonstration; they use trial-and-error to produce the trajectory on their own. Task-space performance is evaluated pre- and post-training for each user to determine the relative and absolute performance improvements of the groups across the three training approaches. Absolute performance improvements are compared to the performance of an expert and a minimum-jerk trajectory to gauge how skillful the participant becomes with respect to the expert. The kinesthetic approach shows superior indicators of performance in trajectory similarity to the minimum-jerk trajectory with 39% and 13% improvement over the observational and discovery methods, respectively. Observational training shows greater improvement in terms of the smoothness of the velocity profile with 32.7% compared to 29.5% and 21.9% for both discovery and kinesthetic training, respectively.
机译:机器人示威学习(LfD)使机器人可以通过观察示威者执行的动作来实现自主操纵。因此,LfD已被确定为在日常环境中进行有用的用户交互的关键元素。动觉教学是LfD中的一种教学技术,它需要物理指导机器人完成任务。当演示多自由度操纵器上的复杂动作时,新手用户通常会遇到轨迹连续性和关节定向困难,这需要专家进行培训。在对九个新手用户的研究中,对不同的培训方法进行了比较。这些方法是动觉,观察和发现学习的方法。动觉方法利用在7自由度Barrett Technology WAM机器人上实现的记录和回放功能。新手用户在重放专家轨迹时会被动地握住手臂。观察培训小组使用专家的视觉演示。发现学习小组未收到专家演示;他们使用试错法自行产生轨迹。在每个用户的培训前和培训后评估任务空间的性能,以确定在三种培训方法中各组的相对和绝对性能改进。将绝对绩效的提高与专家的绩效以及最小跳动轨迹进行比较,以衡量参与者相对于专家的熟练程度。动觉方法显示了在与最小跳动轨迹相似的轨迹上表现的出色指标,分别比观察和发现方法提高了39%和13%。观察训练显示速度分布的平滑度有32.7%的改善,相比之下,发现和动觉训练分别为29.5%和21.9%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号