Human-robot collaborative task planning using anticipatory brain responses.

Journal: PloS one
Published Date:

Abstract

Human-robot interaction (HRI) describes scenarios in which both human and robot work as partners, sharing the same environment or complementing each other on a joint task. HRI is characterized by the need for high adaptability and flexibility of robotic systems toward their human interaction partners. One of the major challenges in HRI is task planning with dynamic subtask assignment, which is particularly challenging when subtask choices of the human are not readily accessible by the robot. In the present work, we explore the feasibility of using electroencephalogram (EEG) based neuro-cognitive measures for online robot learning of dynamic subtask assignment. To this end, we demonstrate in an experimental human subject study, featuring a joint HRI task with a UR10 robotic manipulator, the presence of EEG measures indicative of a human partner anticipating a takeover situation from human to robot or vice-versa. The present work further proposes a reinforcement learning based algorithm employing these measures as a neuronal feedback signal from the human to the robot for dynamic learning of subtask-assignment. The efficacy of this algorithm is validated in a simulation-based study. The simulation results reveal that even with relatively low decoding accuracies, successful robot learning of subtask-assignment is feasible, with around 80% choice accuracy among four subtasks within 17 minutes of collaboration. The simulation results further reveal that scalability to more subtasks is feasible and mainly accompanied with longer robot learning times. These findings demonstrate the usability of EEG-based neuro-cognitive measures to mediate the complex and largely unsolved problem of human-robot collaborative task planning.

Authors

  • Stefan K Ehrlich
  • Emmanuel Dean-Leon
    Institute for Cognitive Systems (ICS), Technische Universität München, Arcisstraße 21, 80333 München, Germany.
  • Nicholas Tacca
    Chair of Robotics and Systems Intelligence, MIRMI-Munich Institute of Robotics and Machine Intelligence, Technical University of Munich (TUM), formerly MSRM, Munich, Germany.
  • Simon Armleder
    Chair for Cognitive Systems, Department of Electrical Engineering, TUM School of Computation, Information and Technology, Technical University of Munich, Munich, Germany.
  • Viktorija Dimova-Edeleva
    MIRMI - Munich Institute of Robotics and Machine Intelligence, formerly MSRM, Technical University of Munich, Munich, Germany.
  • Gordon Cheng
    Technische Universität München, Institute for Cognitive Systems, Arcisstraße 21, 80333 München, Germany.