In the last two decades, electroencephalography (EEG) signals have been used as a relevant source of information in human-robot interaction (HRI). In particular, in the last years Error Related Potentials (ErrPs) have been introduced. These potentials can be leveraged during interaction tasks to mark the mismatch between a robot’s behavior and human expectations. These signals are used to better adapt the robot to human needs, through a control based on these signals. This work aims to investigate ErrPs to study their potential through an experiment, in order to use them as feedback for adapting and correcting a robot system. We present a setup and experimental protocol: the experiment is divided into five tasks with seven subjects. For every task, we have 120 events, with a 25%–35% probability of error. We used Matlab2023a and the toolbox EEGLAB2023.0 for EEG analysis. We performed this experiment with a Baxter robot and the interaction with the robot was done in two different ways, with a keyboard or in a teleoperation scheme. The tasks are designed to reproduce, for example, a problem teleoperated pick and place in the industry.

Fava, A., Lucchese, A., Meattini, R., Palli, G., Villani, V., Sabattini, L. (2024). Detecting ErrPs Signals in HRI Tasks. london : springer [10.1007/978-3-031-76428-8_20].

Detecting ErrPs Signals in HRI Tasks

Meattini, Roberto;Palli, Gianluca;
2024

Abstract

In the last two decades, electroencephalography (EEG) signals have been used as a relevant source of information in human-robot interaction (HRI). In particular, in the last years Error Related Potentials (ErrPs) have been introduced. These potentials can be leveraged during interaction tasks to mark the mismatch between a robot’s behavior and human expectations. These signals are used to better adapt the robot to human needs, through a control based on these signals. This work aims to investigate ErrPs to study their potential through an experiment, in order to use them as feedback for adapting and correcting a robot system. We present a setup and experimental protocol: the experiment is divided into five tasks with seven subjects. For every task, we have 120 events, with a 25%–35% probability of error. We used Matlab2023a and the toolbox EEGLAB2023.0 for EEG analysis. We performed this experiment with a Baxter robot and the interaction with the robot was done in two different ways, with a keyboard or in a teleoperation scheme. The tasks are designed to reproduce, for example, a problem teleoperated pick and place in the industry.
2024
European Robotics Forum 2024
101
106
Fava, A., Lucchese, A., Meattini, R., Palli, G., Villani, V., Sabattini, L. (2024). Detecting ErrPs Signals in HRI Tasks. london : springer [10.1007/978-3-031-76428-8_20].
Fava, Alessandra; Lucchese, Adriana; Meattini, Roberto; Palli, Gianluca; Villani, Valeria; Sabattini, Lorenzo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1038330
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