TY - JOUR
T1 - Subject-Independent Classification of Motor Imagery Tasks in EEG Using Multisubject Ensemble CNN
AU - Dolzhikova, Irina
AU - Abibullaev, Berdakh
AU - Sameni, Reza
AU - Zollanvari, Amin
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2022
Y1 - 2022
N2 - Subject-independent (SI) classification is a major area of investigation in Brain-Computer Interface (BCI) that aims to construct classifiers of users' mental states based on collected electroencephalogram (EEG) of independent subjects. Significant inter-subject variabilities in the EEG are among the most challenging issues in designing SI BCI systems. In this work, we propose and examine the utility of Multi-Subject Ensemble Convolutional Neural Network (MS-En-CNN) for SI classification of motor imagery (MI) tasks. The base classifiers used in MS-En-CNN have a fixed CNN architecture (referred to as DeepConvNet) that are trained using data collected from multiple subjects during the training process. In this regard, training subjects are divided into K-folds using which K base DeepConvNets are trained based on data from K-1 folds, whereas the hyperparameter optimization is performed using the held-out fold. We evaluate the performance of the MS-En-CNN on the large open-access MI dataset from the literature, which includes 54 participants and a total number of 21,600 trials. The result shows that the MS-En-CNN achieves the highest single-trial SI classification performance reported on this dataset. In particular, we obtained SI classification performances with average and median accuracies of 85.42% and 86.50% (± 10.16%), respectively. This result exhibits a statistically significant improvement (p < 0.001) over the best previously reported result with an average and a median accuracy of 84.19% and 84.50% (±10.08%), respectively.
AB - Subject-independent (SI) classification is a major area of investigation in Brain-Computer Interface (BCI) that aims to construct classifiers of users' mental states based on collected electroencephalogram (EEG) of independent subjects. Significant inter-subject variabilities in the EEG are among the most challenging issues in designing SI BCI systems. In this work, we propose and examine the utility of Multi-Subject Ensemble Convolutional Neural Network (MS-En-CNN) for SI classification of motor imagery (MI) tasks. The base classifiers used in MS-En-CNN have a fixed CNN architecture (referred to as DeepConvNet) that are trained using data collected from multiple subjects during the training process. In this regard, training subjects are divided into K-folds using which K base DeepConvNets are trained based on data from K-1 folds, whereas the hyperparameter optimization is performed using the held-out fold. We evaluate the performance of the MS-En-CNN on the large open-access MI dataset from the literature, which includes 54 participants and a total number of 21,600 trials. The result shows that the MS-En-CNN achieves the highest single-trial SI classification performance reported on this dataset. In particular, we obtained SI classification performances with average and median accuracies of 85.42% and 86.50% (± 10.16%), respectively. This result exhibits a statistically significant improvement (p < 0.001) over the best previously reported result with an average and a median accuracy of 84.19% and 84.50% (±10.08%), respectively.
KW - Brain-computer interface
KW - convolutional neural network
KW - deep learning
KW - multi-subject ensemble
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U2 - 10.1109/ACCESS.2022.3195513
DO - 10.1109/ACCESS.2022.3195513
M3 - Article
AN - SCOPUS:85135753612
SN - 2169-3536
VL - 10
SP - 81355
EP - 81363
JO - IEEE Access
JF - IEEE Access
ER -