Publication | Open Access
The Grasp Strategy of a Robot Passer Influences Performance and Quality of the Robot-Human Object Handover
23
Citations
62
References
2020
Year
Robot KinematicsHuman-robot Collaborative AssemblyEngineeringDexterous ManipulationCognitive RoboticsMotor ControlObject ManipulationRobot-human Object HandoverGrasping StrategyKinesiologyHumanrobot CollaborationKinematicsRobot LearningHealth SciencesAssistive TechnologyMechatronicsHuman-robot InteractionTask-aware Robotic GraspingAutomationCollaborative Object ManipulationGrasp StrategyRobotics
Task-aware robotic grasping is critical if robots are to successfully cooperate with humans. The choice of a grasp is multi-faceted; however, the task to perform primes this choice in terms of hand shaping and placement on the object. This grasping strategy is particularly important for a robot companion, as it can potentially hinder the success of the collaboration with humans. In this work, we investigate how different grasping strategies of a robot passer influence the performance and the perceptions of the interaction of a human receiver. Our findings suggest that a grasping strategy that accounts for the subsequent task of the receiver improves substantially the performance of the human receiver in executing the subsequent task. The time to complete the task is reduced by eliminating the need of a post-handover re-adjustment of the object. Furthermore, the human perceptions of the interaction improve when a task-oriented grasping strategy is adopted. The influence of the robotic grasp strategy increases as the constraints induced by the object's affordances become more restrictive. The results of this work can benefit the wider robotics community, with application ranging from industrial to household human-robot interaction for cooperative and collaborative object manipulation.
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