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Motor Imagery EEG Signals Analysis Based on Bayesian Network with Gaussian Distribution

机译:电机图像eEG信号基于高斯分布的贝叶斯网络分析

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A novel communication channel from brain to machine, the research of Brain-computer interfacing is attracted more and more attention recently. In this paper, a novel method based on Bayesian Network is proposed to analyze multi motor imagery task. On the one hand, the channel physical position and mean motor imagery class information are adopted as constrains in BN structure construction. On the other hand, continuous Gaussian distribution model is used to model the bayesian network nodes other than discretizing variable in traditional methods, which would reflect the real character of EEG signals. Finally, the network structure and edge inference score are used to construct SVM classifier. Experimental results on the BCI competition data and lab collected data show that the average accuracy of the two experiments are 93% and 88%, which are better comparing to current methods.
机译:从大脑到机器的新型通信通道,脑电电脑接口的研究最近被吸引了越来越多的关注。本文提出了一种基于贝叶斯网络的新方法来分析多电机图像任务。一方面,采用通道物理位置和平均电机图像信息作为BN结构结构中的约束。另一方面,连续高斯分布模型用于在传统方法中模拟除了离散变量的贝叶斯网络节点,这将反映EEG信号的真实字符。最后,网络结构和边缘推理评分用于构建SVM分类器。 BCI竞争数据和实验室收集数据的实验结果表明,两项实验的平均准确性为93%和88%,与当前方法相比更好。

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