Recent deep learning-based Brain-Computer Interface (BCI) decoding algorithms mainly focus on spatial-temporal features, while failing to explicitly explore spectral information which is one of the most important cues for BCI. In this paper, we propose a novel regional attention convolutional neural network (RACNN) to take full advantage of spectral-spatial-temporal features for EEG motion intention recognition. Time-frequency based analysis is adopted to reveal spectral-temporal features in terms of neural oscillations of primary sensorimotor. The basic idea of RACNN is to identify the activated area of the primary sensorimotor adaptively. The RACNN aggregates a varied number of spectral-temporal features produced by a backbone convolutional neural network into a compact fixed-length representation. Inspired by the neuroscience findings that functional asymmetry of the cerebral hemisphere, we propose a region biased loss to encourage high attention weights for the most critical regions. Extensive evaluations on two benchmark datasets and real-world BCI dataset show that our approach significantly outperforms previous methods.
CITATION STYLE
Fang, Z., Wang, W., Ren, S., Wang, J., Shi, W., Liang, X., … Hou, Z. (2020). Learning regional attention convolutional neural network for motion intention recognition based on EEG data. In IJCAI International Joint Conference on Artificial Intelligence (Vol. 2021-January, pp. 1570–1576). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2020/218
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