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Conference Papers Year : 2020

EEG-based Hypo-vigilance detection using convolutional neural network

Abstract

Hypo-vigilance detection is becoming an important active research areas in the biomedical signal processing field. For this purpose, electroencephalogram (EEG) is one of the most common modalities in drowsiness and awakeness detection. In this context, we propose a new EEG classification method for detecting fatigue state. Our method makes use of a and awakeness detection. In this context, we propose a new EEG classification method for detecting fatigue state. Our method makes use of a Convolutional Neural Network (CNN) architecture. We define an experimental protocol using the Emotiv EPOC+ headset. After that, we evaluate our proposed method on a recorded and annotated dataset. The reported results demonstrate high detection accuracy (93%) and indicate that the proposed method is an efficient alternative for hypo-vigilance detection as compared with other methods.
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Dates and versions

hal-02947739 , version 1 (24-09-2020)

Identifiers

  • HAL Id : hal-02947739 , version 1
  • OATAO : 26416

Cite

Amal Boudaya, Bassem Bouaziz, Siwar Chaabene, Lotfi Chaari, Achraf Ammar, et al.. EEG-based Hypo-vigilance detection using convolutional neural network. 18th International Conference Smart Homes and Health Telematics (ICOST 2020), Jun 2020, Hammamet, Tunisia. pp.69-78. ⟨hal-02947739⟩
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