Effects of local and global spatial patterns in EEG motor-imagery classification using convolutional neural network
Jacob Jiexun Liao, Joy Jiayu Luo, Tao Yang, Rosa Q. So, Matthew Chin Heng Chua
Abstract
ABSTRACT An emerging idea in electroencephalogram motor-imagery (EEG-MI) classification is the ‘EEG-as-image’ approach. It aims to capture local EEG signal dynamics by preserving the spatial relationships of EEG channels. We hypothesize that due to the global nature of EEG modulations, a better approach is to apply global unmixing filters. Using the BCI competition IV dataset 2a, we proposed three deep learning models: (1) one which applies multiple local spatial convolutions; (2) one which applies a global spatial convolution; and (3) a parallel architecture which combines both. Experiment results showed that the global model achieved an overall classification accuracy of 74.6% and outperformed the local and parallel architectures by 2.8% and 1.4%, respectively. It also outperformed the next best recorded result by 0.1%. By exploring the impact of local and global spatial filters on EEG-MI classification, this paper helps to advance the study of EEG feature representation within a deep learning framework.