Journal of neuroscience methods

Using a multi-level attention neural network to classify imagined movements

Updated

Abstract

MSAttNet achieves accuracies of 78.20%, 84.52%, 75.94%, and 78.60% in cross-session experiments across four datasets.

  • A multi-band segmentation module enhances features in the frequency domain.
  • An attention spatial convolution module adapts convolutional kernel parameters to capture dataset-specific features.
  • Multi-scale temporal convolution groups outputs from the attention module to extract temporal features and reduce noise.
  • MSAttNet improves decoding performance in motor imagery tasks compared to existing algorithms.

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