Clustering for mitigating subject variability in driving fatigue classification using electroencephalography source-space functional connectivity features

Khanh Ha Nguyen, Yvonne Tran, Ashley Craig, Hung Nguyen, Rifai Chai

Research output: Contribution to journalArticlepeer-review

Abstract

Objective.While Electroencephalography (EEG)-based driver fatigue state classification models have demonstrated effectiveness, their real-world application remains uncertain. The substantial variability in EEG signals among individuals poses a challenge in developing a universal model, often necessitating retraining with the introduction of new subjects. However, obtaining sufficient data for retraining, especially fatigue data for new subjects, is impractical in real-world settings. Approach.In response to these challenges, this paper introduces a hybrid solution for fatigue detection that combines clustering with classification. Unsupervised clustering groups subjects based on their EEG functional connectivity (FC) in an alert state, and classification models are subsequently applied to each cluster for predicting alert and fatigue states. Main results. Results indicate that classification on clusters achieves higher accuracy than scenarios without clustering, suggesting successful grouping of subjects with similar FC characteristics through clustering, thereby enhancing the classification process. Significance.Furthermore, the proposed hybrid method ensures a practical and realistic retraining process, improving the adaptability and effectiveness of the fatigue detection system in real-world applications.

Original languageEnglish
Article number066002
Pages (from-to)1-10
Number of pages10
JournalJournal of Neural Engineering
Volume21
Issue number6
Early online date25 Oct 2024
DOIs
Publication statusPublished - Dec 2024

Keywords

  • EEG
  • functional connectivity
  • subject variability
  • clustering
  • classification
  • driver fatigue

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