Pan Lincong, Sun Xinwei, Wang Kun, Cao Yupei, Xu Minpeng, Ming Dong
Academy of Medical Engineering and Translational Medicine, Tianjin University, Tianjin 300072, P. R. China.
School of Precision Instruments and Opto-Electronic Engineering, Tianjin University, Tianjin 300072, P. R. China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2025 Apr 25;42(2):272-279. doi: 10.7507/1001-5515.202411035.
Motor imagery (MI) is a mental process that can be recognized by electroencephalography (EEG) without actual movement. It has significant research value and application potential in the field of brain-computer interface (BCI) technology. To address the challenges posed by the non-stationary nature and low signal-to-noise ratio of MI-EEG signals, this study proposed a Riemannian spatial filtering and domain adaptation (RSFDA) method for improving the accuracy and efficiency of cross-session MI-BCI classification tasks. The approach addressed the issue of inconsistent data distribution between source and target domains through a multi-module collaborative framework, which enhanced the generalization capability of cross-session MI-EEG classification models. Comparative experiments were conducted on three public datasets to evaluate RSFDA against eight existing methods in terms of classification accuracy and computational efficiency. The experimental results demonstrated that RSFDA achieved an average classification accuracy of 79.37%, outperforming the state-of-the-art deep learning method Tensor-CSPNet (76.46%) by 2.91% ( < 0.01). Furthermore, the proposed method showed significantly lower computational costs, requiring only approximately 3 minutes of average training time compared to Tensor-CSPNet's 25 minutes, representing a reduction of 22 minutes. These findings indicate that the RSFDA method demonstrates superior performance in cross-session MI-EEG classification tasks by effectively balancing accuracy and efficiency. However, its applicability in complex transfer learning scenarios remains to be further investigated.
运动想象(MI)是一种无需实际运动就能通过脑电图(EEG)识别的心理过程。它在脑机接口(BCI)技术领域具有重要的研究价值和应用潜力。为应对运动想象脑电图(MI-EEG)信号的非平稳性和低信噪比带来的挑战,本研究提出了一种黎曼空间滤波与域自适应(RSFDA)方法,以提高跨时段MI-BCI分类任务的准确性和效率。该方法通过多模块协作框架解决了源域和目标域之间数据分布不一致的问题,增强了跨时段MI-EEG分类模型的泛化能力。在三个公共数据集上进行了对比实验,从分类准确率和计算效率方面将RSFDA与八种现有方法进行了评估。实验结果表明,RSFDA的平均分类准确率达到79.37%,比当前最先进的深度学习方法Tensor-CSPNet(76.46%)高出2.91%( < 0.01)。此外,所提出的方法显示出显著更低的计算成本,平均训练时间仅约3分钟,而Tensor-CSPNet为25分钟,减少了22分钟。这些发现表明,RSFDA方法通过有效平衡准确率和效率,在跨时段MI-EEG分类任务中表现出卓越性能。然而,其在复杂迁移学习场景中的适用性仍有待进一步研究。