Paper ID: 2404.07505
Model Predictive Trajectory Planning for Human-Robot Handovers
Thies Oelerich, Christian Hartl-Nesic, Andreas Kugi
This work develops a novel trajectory planner for human-robot handovers. The handover requirements can naturally be handled by a path-following-based model predictive controller, where the path progress serves as a progress measure of the handover. Moreover, the deviations from the path are used to follow human motion by adapting the path deviation bounds with a handover location prediction. A Gaussian process regression model, which is trained on known handover trajectories, is employed for this prediction. Experiments with a collaborative 7-DoF robotic manipulator show the effectiveness and versatility of the proposed approach.
Submitted: Apr 11, 2024