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Analysis and classification of hybrid BCI based on motor imagery and speech imagery

机译:基于电动机图像和言语图像的混合BCI分析与分类

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摘要

As a new communication mode between human and computers, brain-computer interfaces (BCIs) based on electroencephalography (EEG) have been widely studied. In order to increase the operational dimension of BCIs, this paper proposes a hybrid BCI based on motor imagery and speech imagery. According to one versus one calculation model, common spatial pattern (CSP) is extended to a three-category algorithm. The energy eigenvalues extracted by CSP are combined with synchronization eigenvalues, which are respectively calculated by cross-correlation function and phase locking value (PLV). The maximum difference of synchronization between two mental tasks is considered as a method to confirm the channel pairs. The experimental results of ten subjects show that: the highest average classification accuracy in three mental tasks is speech imagery (74.3%); imagining left hand movement is followed (71.4%); imagining right hand movement is the last one (69.8%). The classification results can be improved by combining synchronization and CSP, and the synchronization from cross-correlation function is better than PLV. The frequency range and channel pairs both have certain individual differences. By individually adjusting the appropriate settings for each subject, the usage efficiency of BCIs can be improved. (C) 2019 Elsevier Ltd. All rights reserved.
机译:作为人与计算机之间的新通信模式,已广泛研究了基于脑电图(EEG)的脑 - 计算机接口(BCI)。为了增加BCI的操作维度,本文提出了一种基于电机图像和言语图像的混合BCI。根据一个与一个计算模型,常见的空间模式(CSP)扩展到三类算法。 CSP提取的能量特征值与同步特征值组合,分别通过互相关函数和阶段锁定值(PLV)计算。两个心理任务之间的最大同步差异被认为是确认信道对的方法。十个受试者的实验结果表明:三种心理任务中的最高平均分类准确性是语音图像(74.3%);遵循想象左手运动(71.4%);想象右手运动是最后一个(69.8%)。通过组合同步和CSP可以提高分类结果,并且来自互相关函数的同步优于PLV。频率范围和通道对都具有某些单独的差异。通过单独调整每个主题的适当设置,可以提高BCI的使用效率。 (c)2019年elestvier有限公司保留所有权利。

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