An RNN arbitration model is trained on user data collected under shared control to blend human and robot commands in teleoperated pick-and-place tasks, with preliminary virtual-environment results compared to handcrafted baselines.
Real-time perception meets reactive motion gen- eration
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Learning Arbitration for Shared Autonomy by Hindsight Data Aggregation
An RNN arbitration model is trained on user data collected under shared control to blend human and robot commands in teleoperated pick-and-place tasks, with preliminary virtual-environment results compared to handcrafted baselines.