Motor imagery-based EEG signals classification by combining temporal and spatial deep characteristics

Xiaoling Li
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引用次数: 7

Abstract

In order to improve the weak recognition accuracy and robustness of the classification algorithm for brain-computer interface (BCI), this paper proposed a novel classification algorithm for motor imagery based on temporal and spatial characteristics extracted by using convolutional neural networks (TS-CNN) model.,According to the proposed algorithm, a five-layer neural network model was constructed to classify the electroencephalogram (EEG) signals. Firstly, the author designed a motor imagery-based BCI experiment, and four subjects were recruited to participate in the experiment for the recording of EEG signals. Then, after the EEG signals were preprocessed, the temporal and spatial characteristics of EEG signals were extracted by longitudinal convolutional kernel and transverse convolutional kernels, respectively. Finally, the classification of motor imagery was completed by using two fully connected layers.,To validate the classification performance and efficiency of the proposed algorithm, the comparative experiments with the state-of-the-arts algorithms are applied to validate the proposed algorithm. Experimental results have shown that the proposed TS-CNN model has the best performance and efficiency in the classification of motor imagery, reflecting on the introduced accuracy, precision, recall, ROC curve and F-score indexes.,The proposed TS-CNN model accurately recognized the EEG signals for different tasks of motor imagery, and provided theoretical basis and technical support for the application of BCI control system in the field of rehabilitation exoskeleton.
结合时空深度特征的运动图像脑电信号分类
为了改善脑机接口(BCI)分类算法识别精度和鲁棒性较差的问题,提出了一种基于卷积神经网络(TS-CNN)模型提取的运动图像时空特征的分类算法。根据所提出的算法,构建了一个五层神经网络模型对脑电图信号进行分类。首先,设计基于运动图像的脑机接口实验,招募4名被试参与实验,记录脑电信号。然后,对脑电信号进行预处理后,分别采用纵向卷积核和横向卷积核提取脑电信号的时间和空间特征;最后,利用两个完全连通的层来完成运动图像的分类。为了验证所提算法的分类性能和效率,通过与最先进算法的对比实验对所提算法进行了验证。实验结果表明,本文提出的TS-CNN模型在运动图像分类中具有最佳的性能和效率,体现在引入的准确率、精度、召回率、ROC曲线和F-score指标上。所提出的TS-CNN模型能够准确识别运动意象不同任务的脑电信号,为BCI控制系统在康复外骨骼领域的应用提供理论基础和技术支持。
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