首页 /研究 /On the Quality-of-Learning for Haptic Teleoperation-based Skill Transfer Over the Tactile Internet
HRI

On the Quality-of-Learning for Haptic Teleoperation-based Skill Transfer Over the Tactile Internet

Başak Güleçyüz, Xiao Xu, Andreas Noll, Eckehard Steinbach

发表年份
2020
引用次数
2

摘要

Transfer of skills and teaching tasks to robots face new challenges when the demonstrations are provided remotely via tele-operation. Not only having a remote operator, but also the communication between the tele-operator and the operator affects the quality of demonstrations. Artifacts introduced by lossy haptic data compression and communication delay deteriorate the system transparency; however, the impact of these on the quality of learning has not been studied yet. In this paper, we construct the bridge between the learning quality and the reduced transparency caused by lossy haptic data compression during teleoperation with haptic feedback. The considered haptic data compression scheme is the previously proposed perceptual dead band-based kinesthetic data reduction approach. The learning quality is assessed both with the mean squared error (MSE) metric on the trajectory level and with the rate of success defined on the task requirement. Our experiments show that the learning quality is reduced significantly for a dead band parameter larger than 20% and 30% for a cube following and peg-in-hole tasks, respectively.

关键词

Haptic technologyTeleoperationComputer scienceLossy compressionKinesthetic learningTransparency (behavior)Artificial intelligenceRobotComputer visionSimulation

相关论文

查看 HRI 分类全部论文