Alapfogalmak
The author presents the SPDNetψ architecture, utilizing the Augmented Covariance Method, to enhance BCI decoding performance with fewer electrodes.
Kivonat
The study introduces SPDNetψ to improve BCI decoding efficiency. It outperforms state-of-the-art DL architectures in MI decoding using only three electrodes. The augmentation procedure enhances classification performance and interpretability. GradCam++ visualization highlights the importance of off-diagonal terms in decision-making. Computational analysis shows longer time but lower environmental impact compared to other models.
Statisztikák
The results of our SPDNetψ demonstrate that the augmented approach combined with the SPDNet significantly outperforms all the current state-of-the-art DL architecture in MI decoding.
Our methodology was tested on nearly 100 subjects from several open-source datasets using the Mother Of All BCI Benchmark (MOABB) framework.
The evaluation is conducted on 5-fold cross-validation, using only three electrodes positioned above the Motor Cortex.
The augmented SPD matrices require an SPDNet with a larger number of parameters, which is partly counteracted by using fewer electrodes.