Intuitive teleoperation enables operators to embody
remote robots, providing the sensation that the robot is part of
their own body during control. The sense of agency (SoA), i.e., the
feeling of controlling the robot, contributes to enhanced motivation and embodiment during teleoperation. However, the SoA can
be diminished by time-varying communication delays associated
with teleoperation. We propose a visual guidance system to assist
operations while maintaining a high SoA when teleoperating robots
with time-varying delays, thereby improving positioning accuracy.
In the proposed system, a recurrent neural network (RNN) model,
trained on the pouring tasks of skilled operators, predicts the input
position 500 ms ahead of the input from the novice operator and
visually presents it in real-time as the end-effector target position.
Experiments with time-varying delays confirmed that the proposed
method provides a visual representation of the target position
interpolated in time and space from the real-time input of the
operator, guiding the operator to align with the trajectory of the
skilled operator. The proposed method significantly improves task
performance even under time-varying delays while maintaining a
high SoA compared with other conditions. Applying the prediction system developed in this study to human-robot collaborative
control may enable interventions that maintain the SoA.
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Intuitive teleoperation enables operators to embody
remote robots, providing the sensation that the robot is part of
their own body during control. The sense of agency (SoA), i.e., the
feeling of controlling the robot, contributes to enhanced motivation and embodiment during teleoperation. However, the SoA can
be diminished by time-varying communication delays associated
with teleoperation. We propose a visual guidance system to assist
operations while maintaining a high SoA when teleopera...
»