Efficient Generalized Electroencephalography-Based Drowsiness Detection Approach with Minimal Electrodes.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

Drowsiness is a main factor for various costly defects, even fatal accidents in areas such as construction, transportation, industry and medicine, due to the lack of monitoring vigilance in the mentioned areas. The implementation of a drowsiness detection system can greatly help to reduce the defects and accident rates by alerting individuals when they enter a drowsy state. This research proposes an electroencephalography (EEG)-based approach for detecting drowsiness. EEG signals are passed through a preprocessing chain composed of artifact removal and segmentation to ensure accurate detection followed by different feature extraction methods to extract the different features related to drowsiness. This work explores the use of various machine learning algorithms such as Support Vector Machine (SVM), the K nearest neighbor (KNN), the Naive Bayes (NB), the Decision Tree (DT), and the Multilayer Perceptron (MLP) to analyze EEG signals sourced from the DROZY database, carefully labeled into two distinct states of alertness (awake and drowsy). Segmentation into 10 s intervals ensures precise detection, while a relevant feature selection layer enhances accuracy and generalizability. The proposed approach achieves high accuracy rates of 99.84% and 96.4% for intra (subject by subject) and inter (cross-subject) modes, respectively. SVM emerges as the most effective model for drowsiness detection in the intra mode, while MLP demonstrates superior accuracy in the inter mode. This research offers a promising avenue for implementing proactive drowsiness detection systems to enhance occupational safety across various industries.

Authors

  • Aymen Zayed
    Technology and Medical Imaging Laboratory, Faculty of Medicine Monastir, University of Monastir, Monastir 5019, Tunisia.
  • Nidhameddine Belhadj
    Laboratory of Electronics and Microelectronics, Faculty of Sciences of Monastir, Monsatir 5019, Tunisia.
  • Khaled Ben Khalifa
    University of Sousse, Higher Institute of Applied Sciences and Technology of Sousse, Sousse, Tunisia.
  • Mohamed Hédi Bedoui
    University of Monastir, LR12ES06-Laboratory of Technology and Medical Imaging, Monastir, Tunisia.
  • Carlos Valderrama
    Department of Electronics and Microelectronics (SEMi), University of Mons, 7000 Mons, Belgium.