Title of article :
Spatial-Frequency Feature Learning and Classification of Motor Imagery EEG Based on Deep Convolution Neural Network
Author/Authors :
Miao, Minmin School of Information Engineering - Huzhou University - Huzhou, China , Hu, Wenjun School of Information Engineering - Huzhou University - Huzhou, China , Yin, Hongwei School of Information Engineering - Huzhou University - Huzhou, China , Zhang, Ke School of Information Engineering - Huzhou University - Huzhou, China
Abstract :
EEG pattern recognition is an important part of motor imagery- (MI-) based brain computer interface (BCI) system. Traditional
EEG pattern recognition algorithm usually includes two steps, namely, feature extraction and feature classification. In feature
extraction, common spatial pattern (CSP) is one of the most frequently used algorithms. However, in order to extract the optimal
CSP features, prior knowledge and complex parameter adjustment are often required. Convolutional neural network (CNN) is
one of the most popular deep learning models at present. Within CNN, feature learning and pattern classification are carried out
simultaneously during the procedure of iterative updating of network parameters; thus, it can remove the complicated manual
feature engineering. In this paper, we propose a novel deep learning methodology which can be used for spatial-frequency feature
learning and classification of motor imagery EEG. Specifically, a multilayer CNN model is designed according to the spatialfrequency characteristics of MI EEG signals. An experimental study is carried out on two MI EEG datasets (BCI competition III
dataset IVa and a self-collected right index finger MI dataset) to validate the effectiveness of our algorithm in comparison with
several closely related competing methods. Superior classification performance indicates that our proposed method is a promising
pattern recognition algorithm for MI-based BCI system.
Keywords :
Spatial-Frequency , EEG , Deep , CNN
Journal title :
Computational and Mathematical Methods in Medicine