Applying Common Spatial Pattern and Convolutional Neural Network to Classify Movements via EEG Signals.

Clinical EEG and neuroscience Pub Date : 2024-07-01 Epub Date: 2024-03-24 DOI:10.1177/15500594241234836
Sepideh Zolfaghari, Tohid Yousefi Rezaii, Saeed Meshgini
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Abstract

Developing an electroencephalography (EEG)-based brain-computer interface (BCI) system is crucial to enhancing the control of external prostheses by accurately distinguishing various movements through brain signals. This innovation can provide comfortable circumstances for the populace who have movement disabilities. This study combined the most prospering methods used in BCI systems, including one-versus-rest common spatial pattern (OVR-CSP) and convolutional neural network (CNN), to automatically extract features and classify eight different movements of the shoulder, wrist, and elbow via EEG signals. The number of subjects who participated in the experiment was 10, and their EEG signals were recorded while performing movements at fast and slow speeds. We used preprocessing techniques before transforming EEG signals into another space by OVR-CSP, followed by sending signals into the CNN architecture consisting of four convolutional layers. Moreover, we extracted feature vectors after applying OVR-CSP and considered them as inputs to KNN, SVM, and MLP classifiers. Then, the performance of these classifiers was compared with the CNN method. The results demonstrated that the classification of eight movements using the proposed CNN architecture obtained an average accuracy of 97.65% for slow movements and 96.25% for fast movements in the subject-independent model. This method outperformed other classifiers with a substantial difference; ergo, it can be useful in improving BCI systems for better control of prostheses.

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应用常见空间模式和卷积神经网络,通过脑电信号对运动进行分类。
开发基于脑电图(EEG)的脑机接口(BCI)系统对于通过大脑信号准确区分各种动作来增强外部假肢的控制至关重要。这项创新可以为有运动障碍的人群提供舒适的环境。这项研究结合了BCI系统中最常用的方法,包括单向与复向共同空间模式(OVR-CSP)和卷积神经网络(CNN),通过脑电信号自动提取特征并对肩部、手腕和肘部的八种不同动作进行分类。参与实验的受试者人数为 10 人,他们在以快速和慢速做动作时记录了脑电信号。在通过 OVR-CSP 将脑电信号转换到另一个空间之前,我们使用了预处理技术,然后将信号送入由四个卷积层组成的 CNN 架构。此外,我们在应用 OVR-CSP 后提取了特征向量,并将其视为 KNN、SVM 和 MLP 分类器的输入。然后,将这些分类器的性能与 CNN 方法进行了比较。结果表明,在与受试者无关的模型中,使用提出的 CNN 架构对八个动作进行分类的平均准确率为:慢速动作 97.65%,快速动作 96.25%。该方法在性能上大大优于其他分类器;因此,它可用于改进 BCI 系统,以更好地控制假肢。
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