Zhang Yuxin, Zhang Chenrui, Sun Shihao, Xu Guizhi
Department of Biomedical Engineering, School of Health Sciences and Biomedical Engineering, Hebei University of Technology, TianJin 300130, P. R. China.
State Key Laboratory of Reliability and Intelligence of Electrical Equipment, Hebei University of Technology, Tianjin 300130, P. R. China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2025 Feb 25;42(1):9-16. doi: 10.7507/1001-5515.202304067.
This paper proposes a motor imagery recognition algorithm based on feature fusion and transfer adaptive boosting (TrAdaboost) to address the issue of low accuracy in motor imagery (MI) recognition across subjects, thereby increasing the reliability of MI-based brain-computer interfaces (BCI) for cross-individual use. Using the autoregressive model, power spectral density and discrete wavelet transform, time-frequency domain features of MI can be obtained, while the filter bank common spatial pattern is used to extract spatial domain features, and multi-scale dispersion entropy is employed to extract nonlinear features. The IV-2a dataset from the 4 International BCI Competition was used for the binary classification task, with the pattern recognition model constructed by combining the improved TrAdaboost integrated learning algorithm with support vector machine (SVM), nearest neighbor (KNN), and mind evolutionary algorithm-based back propagation (MEA-BP) neural network. The results show that the SVM-based TrAdaboost integrated learning algorithm has the best performance when 30% of the target domain instance data is migrated, with an average classification accuracy of 86.17%, a Kappa value of 0.723 3, and an AUC value of 0.849 8. These results suggest that the algorithm can be used to recognize MI signals across individuals, providing a new way to improve the generalization capability of BCI recognition models.
本文提出了一种基于特征融合和转移自适应增强(TrAdaboost)的运动想象识别算法,以解决跨个体运动想象(MI)识别准确率低的问题,从而提高基于MI的脑机接口(BCI)跨个体使用的可靠性。利用自回归模型、功率谱密度和离散小波变换,可以获得MI的时频域特征,同时使用滤波器组公共空间模式提取空间域特征,并采用多尺度分散熵提取非线性特征。来自第四届国际BCI竞赛的IV-2a数据集用于二分类任务,通过将改进的TrAdaboost集成学习算法与支持向量机(SVM)、最近邻(KNN)和基于思维进化算法的反向传播(MEA-BP)神经网络相结合构建模式识别模型。结果表明,当迁移30%的目标域实例数据时,基于SVM的TrAdaboost集成学习算法性能最佳,平均分类准确率为86.17%,Kappa值为0.723 3,AUC值为0.849 8。这些结果表明,该算法可用于跨个体识别MI信号,为提高BCI识别模型的泛化能力提供了一种新方法。