4.6 Article

Adaptive Spatiotemporal Graph Convolutional Networks for Motor Imagery Classification

Journal

IEEE SIGNAL PROCESSING LETTERS
Volume 28, Issue -, Pages 219-223

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LSP.2021.3049683

Keywords

Convolution; Electroencephalography; Spatiotemporal phenomena; Feature extraction; Electrodes; Task analysis; Adaptive systems; Brain computer interfaces (BCI); electroencephalogram (EEG); motor imagery (MI); graph neural network; spatiotemporal structure

Funding

  1. National Natural Science Foundation of China [61971303, 81971660]
  2. Tianjin Outstanding Youth Fund Project [20JCJQIC00230]
  3. Program of Chinese Institute for Brain Research in Beijing [2020-NKX-XM-14]
  4. Beijing Major Science and Technology Project [Z191100010618004]
  5. Tianjin Key Project [18JCZDJC32700]
  6. Sichuan International Cooperation [2021YFH0004]

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Classification of MI-EEG tasks is crucial in BCI, and a novel framework based on graph neural network is proposed. The method includes adaptive graph convolutional layer and adaptive spatiotemporal graph convolutional network, which outperform state-of-the-art methods in terms of classification quality and robustness.
Classification of electroencephalogram-based motor imagery (MI-EEG) tasks is crucial in brain computer interfaces (BCI). In view of the characteristics of non-stationarity, time-variability and individual diversity of EEG signals, a novel framework based on graph neural network is proposed for MI-EEG classification. First, an adaptive graph convolutional layer (AGCL) is constructed, by which the electrode channel information are integrated dynamically. We further propose an adaptive spatiotemporal graph convolutional network (ASTGCN), which fully exploits the characteristics of EEG signals in time domain and the channel correlations in spatial domain simultaneously. We execute the experiments using EEG signals recorded at motor imagery scenarios, where twenty-five healthy subjects performed MI movements of the right hand and feet to generate motor commands. Experimental results reveal that the proposed method outperforms state-of-the-art methods in terms of both classification quality and robustness. The advantages of ASTGCN include high accuracy, high efficiency, and robustness to cross-trial and cross-subject variations, making it an ideal candidate for long-term MI-EEG applications.

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