首页 /研究 /Challenges in Detecting and Analyzing EEG Error-Related Potentials: Lessons from a Case Study in HRI
HRI

Challenges in Detecting and Analyzing EEG Error-Related Potentials: Lessons from a Case Study in HRI

Alessandra Fava, Adriana Lucchese, Roberto Meattini, Gianluca Palli, Valeria Villani, Lorenzo Sabattini

发表年份
2024
引用次数
2

摘要

Recently, electroencephalographic (EEG) signals have been used to enhance Human-Robot Interaction (HRI). In particular, Error-Related Potentials (ErrPs) have been exploited since very few years. These potentials are evoked when there is a mismatch between the command given by the subject and the movements of the robot, or if the user’s expectation is different from the robot or other human behavior. These signals can be used to improve and customize the robot system, as feedback to better adapt the robot to human needs. This work aims to investigate and detect the ErrPs during different interaction tasks. We set up an experiment divided into five different tasks, where every task has 120 events with a 25%-35% probability of error. The robot used in the experiment is a Baxter robot and the commands from the subject to the robot are sent in two different ways: with a keyboard or with a motion capture device. This work aims to reproduce a simplified teleoperated pick and place task. However, the achieved results do not allow to correctly identify the ErrPs, but exhibit only some minor differences between trials with and without errors. Hence, we here analyze the reasons behind such negative results, focusing on the challenges of the structure and the setup of the experiment. We analyze the possible problems and provide some recommendations to overcome them in similar use cases.

关键词

ElectroencephalographyComputer scienceArtificial intelligenceSpeech recognitionMachine learningPsychologyNeuroscience

相关论文

查看 HRI 分类全部论文