A novel Capsule Neural Network based model for drowsiness detection using electroencephalography signals

Guarda, Luis; Tapia, Juan; Lopez-Droguett, Enrique; Martins, Marcelo Ramos

Abstract

The early detection of drowsiness has become vital to ensure the correct and safe development of several industries' tasks. Due to the transient mental state of a human subject between alertness and drowsiness, automated drowsiness detection is a complex problem to tackle. The electroencephalography signals allow us to record variations in an individual's brain's electrical potential, where each of them gives specific information about a subject's mental state. However, due to this type of signal's nature, its acquisition, in general, is complex, so it is hard to have a large volume of data to apply techniques of Deep Learning for processing and classification optimally. Nevertheless, Capsule Neural Networks are a brand-new Deep Learning algorithm proposed for work with reduced amounts of data. It is a robust algorithm to handle the data's hierarchical relationships, which is an essential characteristic for work with biomedical signals. Therefore, this paper presents a Deep Learning-based method for drowsiness detection with CapsNet by using a concatenation of spectrogram images of the electroencephalography signals channels. The proposed CapsNet model is compared with a Convolutional Neural Network, which is outperformed by the proposed model, which obtains an average accuracy of 86,44 % and 87,57% of sensitivity against an average accuracy of 75,86% and 79,47% sensitivity for the CNN, showing that CapsNet is more suitable for this kind of datasets and tasks.

Más información

Título según WOS: A novel Capsule Neural Network based model for drowsiness detection using electroencephalography signals
Título según SCOPUS: A novel Capsule Neural Network based model for drowsiness detection using electroencephalography signals
Título de la Revista: EXPERT SYSTEMS WITH APPLICATIONS
Volumen: 201
Editorial: PERGAMON-ELSEVIER SCIENCE LTD
Fecha de publicación: 2022
DOI:

10.1016/J.ESWA.2022.116977

Notas: ISI, SCOPUS