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Feature extraction of four-class motor imagery EEG signals based on functional brain network

机译:基于功能脑网络的四类运动图像脑电信号特征提取

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摘要

Objective. A motor-imagery-based brain-computer interface (MI-BCI) provides an alternative way for people to interface with the outside world. However, the classification accuracy of MI signals remains challenging, especially with an increased number of classes and the presence of high variations with data from multiple individual people. This work investigates electroencephalogram (EEG) signal processing techniques, aiming to enhance the classification performance of multiple MI tasks in terms of tackling the challenges caused by the vast variety of subjects. Approach. This work introduces a novel method to extract discriminative features by combining the features of functional brain networks with two other feature extraction algorithms: common spatial pattern (CSP) and local characteristicscale decomposition (LCD). After functional brain networks are established from the MI EEG signals of the subjects, the measures of degree in the binary networks are extracted as additional features and fused with features in the frequency and spatial domains extracted by the CSP and LCD algorithms. A real-time BCI robot control system is designed and implemented with the proposed method. Subjects can control the movement of the robot through four classes of MI tasks. Both the BCI competition IV dataset 2a and real-time data acquired in our designed system are used to validate the performance of the proposed method. Main results. As for the offline data experiment results, the average classification accuracy of the proposed method reaches 79.7%, outperforming the majority of popular algorithms. Experimental results with real-time data also prove the proposed method to be highly promising in its real-time performance. Significance. The experimental results show that our proposed method is robust in extracting discriminative brain activity features when performing different MI tasks, hence improving the classification accuracy in four-class MI tasks. The high classification accuracy and low computational demand show a considerable practicality for real-time rehabilitation systems.
机译:目的。基于运动图像的脑机接口(MI-BCI)为人们提供了与外界交互的替代方法。但是,MI信号的分类准确性仍然具有挑战性,尤其是随着类别数量的增加以及来自多个个人的数据的高度变化而出现的情况。这项工作研究了脑电图(EEG)信号处理技术,旨在从应对众多主题所带来的挑战方面增强多个MI任务的分类性能。方法。这项工作介绍了一种通过将功能性大脑网络的特征与其他两种特征提取算法(公共空间模式(CSP)和局部特征尺度分解(LCD))相结合来提取歧视性特征的新方法。从受试者的MI EEG信号建立功能性大脑网络后,将二进制网络中的度数度量作为附加特征提取,并与CSP和LCD算法提取的频域和空间域中的特征融合。利用该方法设计并实现了实时BCI机器人控制系统。对象可以通过四类MI任务来控制机器人的运动。 BCI竞赛IV数据集2a和在我们设计的系统中获取的实时数据均用于验证所提出方法的性能。主要结果。对于离线数据实验结果,该方法的平均分类准确率达到79.7%,优于大多数流行算法。实时数据的实验结果也证明了该方法在实时性方面具有很高的前景。意义。实验结果表明,本文提出的方法在执行不同的MI任务时提取具有区别性的大脑活动特征方面具有鲁棒性,从而提高了四类MI任务的分类精度。高分类精度和低计算需求显示了实时康复系统的实用性。

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