Classification of Motor Imagery EEG Signals Using Machine Learning

Amr Abdeltawab, A. Ahmad
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引用次数: 3

Abstract

Brain Computer Interface (BCI) is a term that was first introduced by Jacques Vidal in the 1970s when he created a system that can determine the human eye gaze direction, making the system able to determine the direction a person want to go or move something to using scalp-recorded visual evoked potential (VEP) over the visual cortex. Ever since that time, many researchers where captivated by the huge potential and list of possibilities that can be achieved if simply a digital machine can interpret human thoughts. In this work, we explore electroencephalography (EEG) signal classification, specifically for motor imagery (MI) tasks. Classification of MI tasks can be carried out by using machine learning and deep learning models, yet there is a trade between accuracy and computation time that needs to be maintained. The objective is to create a machine learning model that can be optimized for real-time classification while having a relatively acceptable classification accuracy. The proposed model relies on common spatial patter (CSP) for feature extraction as well as linear discriminant analysis (LDA) for classification. With simple pre-processing stage and a proper selection of data for training the model proved to have a balanced accuracy of +80% while maintaining small run-time (milliseconds) that is opted for real-time classifications
基于机器学习的运动图像脑电信号分类
脑机接口(BCI)是上世纪70年代由雅克·维达尔首次提出的术语,当时他发明了一种可以确定人眼注视方向的系统,使该系统能够利用头皮记录的视觉诱发电位(VEP)在视觉皮层上确定一个人想要走的方向或移动某物。从那时起,许多研究人员就被巨大的潜力和可能性所吸引,只要一台数字机器可以解读人类的思想。在这项工作中,我们探索脑电图(EEG)信号分类,特别是运动图像(MI)任务。人工智能任务的分类可以通过使用机器学习和深度学习模型来进行,但需要在准确性和计算时间之间进行权衡。目标是创建一个可以优化实时分类的机器学习模型,同时具有相对可接受的分类精度。该模型利用公共空间模式(CSP)进行特征提取,利用线性判别分析(LDA)进行分类。通过简单的预处理阶段和适当的训练数据选择,该模型被证明具有+80%的平衡精度,同时保持较小的运行时间(毫秒),选择用于实时分类
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