A transformer-based network with second-order pooling for motor imagery EEG classification

Jul 2, 2025Journal of neural engineering

Using a transformer network with advanced pooling to classify brain signals during imagined movement

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Abstract

SecTNet achieves an average accuracy of 86.88% on the BCI competition IV dataset 2a.

  • Motor imagery-based brain-computer interfaces (BCIs) utilize EEG signals to reflect motor intention from the brain.
  • Existing deep learning models often overlook high-order statistical dependencies in EEG data, which are crucial for accurate decoding.
  • SecTNet integrates a transpose-attention mechanism and second-order pooling to enhance EEG signal interpretation.
  • The model uses Riemannian geometry to analyze the covariance structure of EEG signals.
  • SecTNet is effective in capturing inter-channel dependencies and high-order correlations in EEG features.
  • Even with training on only 50% of the data, SecTNet demonstrates strong generalization capabilities.

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