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RMETNet: A cross-subject motor imagery EEG signal classification model based on TSLANet and riemannian geometry features

Author

Listed:
  • Yun Zhao
  • Dongyi He
  • Fudai Ren
  • Qingling Xia
  • Linhao Xu
  • Guanghui Xie
  • Xiaoling Zhang
  • Renqiang Yang
  • Shuaidong Zou
  • Bin Jiang

Abstract

Motor imagery electroencephalogram (MI-EEG) analysis is essential for natural interaction and autonomous control in brain-computer interfaces (BCIs). However, deep learning models often struggle with inter-subject variability, which limits their ability to generalize across subjects. This study proposes RMETNet, a novel framework that integrates TSLANet, a spatio-temporal convolution module, and a multi-scale Riemannian geometry feature module. TSLANet suppresses noise and captures complex temporal patterns for preliminary signal decoding, while the spatio-temporal convolution module extracts higher-order representations. The Riemannian branch learns geometry-based distribution features across subjects, and the fused features are used for classification. To address inter-subject distribution shifts, RMETNet incorporates Maximum Mean Discrepancy (MMD) loss for domain adaptation, aligning feature distributions between source and target domains. Experiments show that on the four-class BCI Competition IV 2a (BCICIV2a) dataset, RMETNet achieved accuracies of 71.39% in the cross-subject setting and 80.71% in the subject-dependent setting; on the two-class BCI Competition IV 2b (BCICIV2b) dataset, it achieved 80.93% and 86.76%, respectively. The model consistently outperformed baseline algorithms. Ablation and visualization analyses further validated its effectiveness in reducing inter-subject feature distribution disparities and enhancing MI-EEG decoding. The code is available at: https://github.com/rokanfeermecer486/RMETNet.

Suggested Citation

  • Yun Zhao & Dongyi He & Fudai Ren & Qingling Xia & Linhao Xu & Guanghui Xie & Xiaoling Zhang & Renqiang Yang & Shuaidong Zou & Bin Jiang, 2026. "RMETNet: A cross-subject motor imagery EEG signal classification model based on TSLANet and riemannian geometry features," PLOS ONE, Public Library of Science, vol. 21(4), pages 1-22, April.
  • Handle: RePEc:plo:pone00:0347671
    DOI: 10.1371/journal.pone.0347671
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