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基于黎曼几何和时频选择的多类运动想象分类。

Multiclass motor imagery classification with Riemannian geometry and temporal-spectral selection.

机构信息

School of Information Science and Engineering, Yanshan University, Qinhuangdao, 066004, China.

Hebei Key Laboratory of Information Transmission and Signal Processing, Yanshan University, Qinhuangdao, 066004, China.

出版信息

Med Biol Eng Comput. 2024 Oct;62(10):2961-2973. doi: 10.1007/s11517-024-03103-1. Epub 2024 May 9.

Abstract

Motor imagery (MI) based brain-computer interfaces (BCIs) decode the users' intentions from electroencephalography (EEG) to achieve information control and interaction between the brain and external devices. In this paper, firstly, we apply Riemannian geometry to the covariance matrix extracted by spatial filtering to obtain robust and distinct features. Then, a multiscale temporal-spectral segmentation scheme is developed to enrich the feature dimensionality. In order to determine the optimal feature configurations, we utilize a linear learning-based temporal window and spectral band (TWSB) selection method to evaluate the feature contributions, which efficiently reduces the redundant features and improves the decoding efficiency without excessive loss of accuracy. Finally, support vector machines are used to predict the classification labels based on the selected MI features. To evaluate the performance of our model, we test it on the publicly available BCI Competition IV dataset 2a and 2b. The results show that the method has an average accuracy of 79.1% and 83.1%, which outperforms other existing methods. Using TWSB feature selection instead of selecting all features improves the accuracy by up to about 6%. Moreover, the TWSB selection method can effectively reduce the computational burden. We believe that the framework reveals more interpretable feature information of motor imagery EEG signals, provides neural responses discriminative with high accuracy, and facilitates the performance of real-time MI-BCI.

摘要

基于运动想象 (MI) 的脑机接口 (BCI) 通过脑电图 (EEG) 解码用户的意图,实现大脑与外部设备之间的信息控制和交互。在本文中,首先,我们将黎曼几何应用于空间滤波提取的协方差矩阵中,以获得稳健且独特的特征。然后,开发了一种多尺度时频谱段分割方案来丰富特征的维数。为了确定最佳特征配置,我们利用基于线性学习的时窗和频谱带 (TWSB) 选择方法来评估特征的贡献,这有效地减少了冗余特征,提高了解码效率,而不会过度损失准确性。最后,支持向量机用于根据所选的 MI 特征预测分类标签。为了评估我们模型的性能,我们在公开可用的 BCI 竞赛 IV 数据集 2a 和 2b 上进行了测试。结果表明,该方法的平均准确率分别为 79.1%和 83.1%,优于其他现有方法。使用 TWSB 特征选择代替选择所有特征可以将准确率提高多达约 6%。此外,TWSB 选择方法可以有效地减少计算负担。我们相信,该框架揭示了更具可解释性的运动想象 EEG 信号特征,提供了具有高精度的神经响应区分,并有助于实时 MI-BCI 的性能。

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