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A Feature Extraction Algorithm of Brain Network of Motor Imagination Based on a Directed Transfer Function

机译:一种基于定向传递函数的运动想象脑网络特征提取算法

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摘要

Aiming at the feature extraction of left- and right-hand movement imagination EEG signals, this paper proposes a multichannel correlation analysis method and employs the Directed Transfer Function (DTF) to identify the connectivity between different channels of EEG signals, construct a brain network, and extract the characteristics of the network information flow. Since the network information flow identified by DTF can also reflect indirect connectivity of the EEG signal networks, the newly extracted DTF features are incorporated into the traditional AR model parameter features and extend the scope of feature sets. Classifications are carried out through the Support Vector Machine (SVM). The classification results show the enlarged feature set can significantly improve the classification accuracy of the left- and right-hand motor imagery EEG signals compared to the traditional AR feature set. Finally, the EEG signals of 2 channels, 10 channels, and 32 channels were selected for comparing their different effects of classifications. The classification results showed that the multichannel analysis method was more effective. Compared with the parameter features of the traditional AR model, the network information flow features extracted by the DTF method also achieve a higher classification effect, which verifies the effectiveness of the multichannel correlation analysis method.
机译:针对左右运动想象脑电信号的特征提取,提出一种多通道相关性分析方法,采用定向传递函数(DTF)识别脑电信号不同通道之间的连通性,构建脑网络,提取网络信息流的特征。由于DTF识别的网络信息流也可以反映脑电信号网络的间接连通性,因此将新提取的DTF特征纳入传统的AR模型参数特征中,扩展了特征集的范围。分类是通过支持向量机(SVM)进行的。分类结果表明,与传统的AR特征集相比,扩大的特征集可以显著提高左手和右手运动意象脑电信号的分类精度。最后,选取2通道、10通道和32通道的脑电信号,比较其分类的不同效果。分类结果表明,多通道分析方法效果更好。与传统AR模型的参数特征相比,DTF方法提取的网络信息流特征也取得了更高的分类效果,验证了多通道相关性分析方法的有效性。

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