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CSP Features Extraction and FLDA Classification of EEG-Based Motor Imagery for Brain-Computer Interaction

机译:CSP特征提取和FLDA基于EEG的电脑互动的电机图像分类

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A Brain-Computer Interface (BCI) is a revolutionising Human-Computer Interface system, which is in developing state. BCI research aims to develop systems that help disabled people to communicate using computers and their brain waves without any muscular action between a person and a computer. Motor Imagery (MI) is one of the popular paradigm to design the BCI system. Besides the BCI's complicated architecture, the required computation load is heavy. BCIs based on electroencephalogram (EEG) are growing fast, and several EEG-based techniques have been proposed for this purpose. Although EEG signals are characterised by a low spatial resolution and a limited frequency range. Moreover, they are often contaminate by noise caused by a cardiac activity (electrocardiography-ECG effects) and/or ocular artefacts (electrooculography-EOG effects). To handle the problem, in this paper, we present an efficient approach based on Common Spatial Pattern (CSP) for spatial feature extraction and Fisher Linear Discriminant Analysis (FLDA) for classification. In this study, CSP and FLDA have been used to reduce common channels artefacts and to find projections that maximise the discrimination between different classes. A CSP feature extraction of EEG-based Motor Imagery is conducted, then an offline classification of Motor Imagery is performed. Simulation results demonstrate the efficiency and the accuracy of the approach which can be used in real-life applications.
机译:脑电脑界面(BCI)是一种革命性的人机界面系统,其在发展状态。 BCI研究旨在开发系统,帮助残疾人沟通使用计算机及其脑波进行沟通,没有人与计算机之间的任何肌肉动作。电机图像(MI)是设计BCI系统的流行范式之一。除了BCI的复杂架构外,所需的计算负荷很重。基于脑电图(EEG)的BCIS正在快速增长,为此目的提出了几种基于EEG的技术。尽管EEG信号的特征在于低空间分辨率和有限频率范围。此外,它们通常因由心脏活性(心电图-COG效应)和/或眼部人工(电胶凝效应)引起的噪声污染。为了处理问题,在本文中,我们提出了一种基于公共空间模式(CSP)的有效方法,用于用于分类的空间特征提取和FISHER线性判别分析(FLDA)。在本研究中,CSP和FLDA已被用于减少公共渠道人工制品,并找到最大化不同类别之间辨别的投影。进行了基于EEG的电动机图像的CSP特征提取,然后执行电动机图像的离线分类。仿真结果证明了可以在现实生活中使用的方法的效率和准确性。

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