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Maximising Coefficiency of Human-Robot Handovers through Reinforcement Learning

Marta Lagomarsino, Marta Lorenzini, Merryn Dale Constable, Elena De Momi, Cristina Becchio, Arash Ajoudani

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Abstract

Handing objects to humans is an essential capability for collaborative robots. Previous research works on human-robot handovers focus on facilitating the performance of the human partner and possibly minimising the physical effort needed to grasp the object. However, altruistic robot behaviours may result in protracted and awkward robot motions, contributing to unpleasant sensations by the human partner and affecting perceived safety and social acceptance. This letter investigates whether transfer- ring the cognitive science principle that “humans act coefficiently as a group” (i.e. simultaneously maximising the benefits of all agentsinvolved)tohuman-robotcooperativetaskspromotesamore seamless and natural interaction. Human-robot coefficiency is first modelled by identifying implicit indicators of human comfort and discomfort as well as calculating the robot energy consumption in performing the desired trajectory. We then present a reinforcement learning approach that uses the human-robot coefficiency score as reward to adapt and learn online the combination of robot interaction parameters that maximises such coefficiency. Results proved that by acting coefficiently the robot could meet the indi- vidual preferences of most subjects involved in the experiments, improve the human perceived comfort, and foster trust in the robotic partner.

Index terms

Human Factors and Human-in-the-Loop Physical Human-Robot Interaction Human-Centered Robotics