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Flexible Handover with Real-Time Robust Dynamic Grasp Trajectory Generation

About

In recent years, there has been a significant effort dedicated to developing efficient, robust, and general human-to-robot handover systems. However, the area of flexible handover in the context of complex and continuous objects' motion remains relatively unexplored. In this work, we propose an approach for effective and robust flexible handover, which enables the robot to grasp moving objects with flexible motion trajectories with a high success rate. The key innovation of our approach is the generation of real-time robust grasp trajectories. We also design a future grasp prediction algorithm to enhance the system's adaptability to dynamic handover scenes. We conduct one-motion handover experiments and motion-continuous handover experiments on our novel benchmark that includes 31 diverse household objects. The system we have developed allows users to move and rotate objects in their hands within a relatively large range. The success rate of the robot grasping such moving objects is 78.15% over the entire household object benchmark.

Gu Zhang, Hao-Shu Fang, Hongjie Fang, Cewu Lu• 2023

Related benchmarks

TaskDatasetResultRank
Object HandoverCardboard Box Rotation Experiment I
TA3.43
4
Object HandoverBanana Experiment I Rotation
TA4.43
4
Object HandoverExperiment I Cardboard Box Translation
Task Achievement5.87
2
Object HandoverBanana Translation Experiment I
Task Achievement (ta)5.65
2
Object HandoverExperiment I Spoon Rotation
TA4.29
2
Object HandoverExperiment I Spoon Translation
Task Achievement (TA)5.86
2
Object HandoverExperiment I Cup/Mug Translation
Task Achievement5.77
2
Object HandoverExperiment I Cup Mug Rotation
TA5.29
2
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