一个强大的脑机接口系统,用于在日常会话中分类多运动图像任务

M. H. Zaky, A. Nasser, M. Khedr
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引用次数: 2

摘要

在脑机接口(BCI)中,一个对象的思想被读取,只使用大脑信号提供一种适当的交流方式。研究表明,脑电信号的信息在被试之间存在着思维上的延迟。本文通过比较几种分类器测试的不同类型的特征,提出了一种通过离线分析对单个受试者进行多运动图像(MI)任务分类的模型,该模型每天执行一个会话,持续一周。使用了几种分类器和特征提取技术。共同空间模式(CSP)作为线性判别分析(LDA)分类的特征,其平均分类准确率在88%以上,优于所有其他组合。
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A robust Brain Computer Interface system for classifying multi motor imagery tasks over daily sessions
In Brain Computer Interface (BCI), the thoughts of a subject is read to provide an appropriate way of communication using only brain signals. The Information of electroencephalogram (EEG) signals defer between subjects depending on their thoughts according to research. In this paper, a comparison between different types of features tested by several classifiers is done to propose a model for classifying multi motor imagery (MI) tasks through offline analysis for a single subject performing one session daily for a week. Several classifiers and feature extraction techniques were used. Common Spatial Pattern (CSP) as a feature classified by Linear Discriminant Analysis (LDA) was found to outperform all other combinations with an average classification accuracy above 88%.
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