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Channel Optimized Visual Imagery based Robotic Arm Control under the Online Environment

Byoung-Hee Kwon, Byeong-Hoo Lee, Jeong-Hyun Cho

发表年份
2023
引用次数
2

摘要

An electroencephalogram is an effective approach that provides a bidirectional pathway between the user and computer in a non-invasive way. In this study, we adopted the visual imagery data for controlling the BCI-based robotic arm. Visual imagery increases the power of the alpha frequency range of the visual cortex over time as the user performs the task. We proposed a deep learning architecture to decode the visual imagery data using only two channels and also we investigated the combination of two EEG channels that has significant classification performance. When using the proposed method, the highest classification performance using two channels in the offline experiment was 0.661. Also, the highest success rate in the online experiment using two channels (AF3–Oz) was 0.78. Our results provide the possibility of controlling the BCI-based robotic arm using visual imagery data.

关键词

Brain–computer interfaceComputer scienceMotor imageryArtificial intelligenceTask (project management)Channel (broadcasting)VisualizationElectroencephalographyRobotic armComputer vision

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