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Improving Human-Robot Interaction Effectiveness in Human-Robot Collaborative Object Transportation Using Force Prediction

J. E. Domínguez-Vidal, Alberto Sanfeliu

Year
2023
Citations
11

Abstract

In this work, we analyse the use of a prediction of the human's force in a Human-Robot collaborative object transportation task at a middle distance. We check that this force prediction can improve multiple parameters associated with effective Human-Robot Interaction (HRI) such as perception of the robot's contribution to the task, comfort or trust in the robot in a physical Human Robot Interaction (pHRI). We present a Deep Learning model that allows to predict the force that a human will exert in the next 1 <tex xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">$s$</tex> using as inputs the force previously exerted by the human, the robot's velocity and environment information obtained from the robot's LiDAR. Its success rate is up to 92.3% in testset and up to 89.1 % in real experiments. We demonstrate that this force prediction, in addition to being able to be used directly to detect changes in the human's intention, can be processed to obtain an estimate of the human's desired trajectory. We have validated this approach with a user study involving 18 volunteers.

Keywords

RobotHuman–robot interactionTrajectoryTask (project management)Computer scienceArtificial intelligenceObject (grammar)Human–computer interactionSimulationPerception

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