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An optimized deep learning approach based on autoencoder network for P300 detection in brain computer interface systems

Afrah, Ramin; Amini, Zahra; Kafieh, Rahele; Vard, Alireza

An optimized deep learning approach based on autoencoder network for P300 detection in brain computer interface systems Thumbnail


Authors

Ramin Afrah

Zahra Amini

Alireza Vard



Abstract

Background. Brain computer interface (BCI) systems by extracting knowledge from brain signals provide a connection channel to the outside world for disabled people, without physiological interfaces. Event-related potentials (ERPs) are a specific type of electroencephalography signals and P300 is one of the most important ERP components. The critical part of P300-based BCI systems is classification step. In this research, an approach is proposed for P300 classification based on novel machine learning methods using convolutional neural networks (CNN) and autoencoder networks. Methods. In the pre-processing step, channel selection, data augmentation (by ADASYN method), filtering and base-line drift were done. Then, in the classification step, four different CNN classifiers including CNN1D, CNN2D, CNN1D_Autoencoder, and CNN2D-Autoencoder were used for P300 classification. Results. After implementation and tuning the networks, 92% as a best accuracy was achieved by CNN2D_Autoencoder. This result was achieved with a considerable tradeoff between complexity and stability. Conclusion. The acquired results emphasize the ability of the deep learning methods in P300 classification and approve the advantage of using them in BCI systems. Furthermore, autoencoder versions of CNN networks are more stable and have a faster convergence. Meanwhile, ADASYN is a suitable method for augmentation of P300 data and even ERPs by sustaining the premier feature space without copying data. Practical Implications. Our results can increase the accuracy of P300 detection and simultaneously reduce the volume of data using the proposed model. Consequently, they can improve character recognition in P300-speller systems generally used by amyotrophic lateral sclerosis (ALS) patients.

Citation

Afrah, R., Amini, Z., Kafieh, R., & Vard, A. (2022). An optimized deep learning approach based on autoencoder network for P300 detection in brain computer interface systems. Medical Journal of Tabriz University of Medical Science, 44(4), 270-280. https://doi.org/10.34172/mj.2022.033

Journal Article Type Article
Acceptance Date Aug 13, 2022
Online Publication Date Oct 15, 2022
Publication Date 2022
Deposit Date Nov 15, 2022
Publicly Available Date Nov 15, 2022
Journal Medical Journal of Tabriz University of Medical Sciences
Print ISSN 2783-2031
Electronic ISSN 2783-204X
Publisher Tabriz University of Medical Sciences
Peer Reviewed Peer Reviewed
Volume 44
Issue 4
Pages 270-280
DOI https://doi.org/10.34172/mj.2022.033

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