Concurrent Policy Blending and System Identification for Generalized Assistive Control

IEEE International Conference on Robotics and Automation(2022)

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摘要
In this work, we address the problem of solving complex collaborative robotic tasks subject to multiple varying parameters. Our approach combines simultaneous policy blending with system identification to create generalized policies that are robust to changes in system parameters. We employ a blending network whose state space relies solely on parameter estimates from a system identification technique. As a result, this blending network learns how to handle parameter changes instead of trying to learn how to solve the task for a generalized parameter set simultaneously. We demonstrate our scheme's ability on a collaborative robot and human itching task in which the human has motor impairments. We then showcase our approach's efficiency with a variety of system identification techniques when compared to standard domain randomization. The code is available on Luke Bhan's Github.
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关键词
concurrent policy blending,generalized assistive control,complex collaborative robotic tasks,multiple varying parameters,simultaneous policy blending,generalized policies,system parameters,blending network,parameter estimates,system identification technique,parameter changes,generalized parameter,collaborative robot,human itching task
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