Imitating human movement with teleoperated robotic head

2016 25th IEEE International Symposium on Robot and Human Interactive Communication (RO-MAN)(2016)

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摘要
Effective teleoperation requires real-time control of a remote robotic system. In this work, we develop a controller for realizing smooth and accurate motion of a robotic head with application to a teleoperation system for the Furhat robot head [1], which we call TeleFurhat. The controller uses the head motion of an operator measured by a Microsoft Kinect 2 sensor as reference and applies a processing framework to condition and render the motion on the robot head. The processing framework includes a pre-filter based on a moving average filter, a neural network-based model for improving the accuracy of the raw pose measurements of Kinect, and a constrained-state Kalman filter that uses a minimum jerk model to smooth motion trajectories and limit the magnitude of changes in position, velocity, and acceleration. Our results demonstrate that the robot can reproduce the human head motion in real time with a latency of approximately 100 to 170 ms while operating within its physical limits. Furthermore, viewers prefer our new method over rendering the raw pose data from Kinect.
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关键词
human movement,teleoperated robotic head,remote robotic system,robotic head motion,teleoperation system,Furhat robot head,TeleFurhat,Microsoft Kinect 2 sensor,motion rendering,moving average filter,neural network-based model,constrained-state Kalman filter,minimum jerk model,motion trajectories
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