Publication | Open Access
Detection of Driver Vigilance Level Using EEG Signals and Driving Contexts
100
Citations
45
References
2017
Year
NeuropsychologyVigilance LevelSafety ScienceAdvanced Driver-assistance SystemIntelligent SystemsAttentionSocial SciencesDriving ContextsDriver BehaviorAffective ComputingCognitive ElectrophysiologyDriver Vigilance LevelCognitive NeuroscienceSleepCognitive SciencePredictive AnalyticsRehabilitationDriver PerformanceVigilance State ChangesEeg Signal ProcessingBrain ElectrophysiologyNeuroscienceMedicine
Quantitative estimation of a driver's vigilance level has a great value for improving driving safety and preventing accidents. Previous studies have identified correlations between electroencephalogram (EEG) spectrum power and a driver's mental states such as vigilance and alertness. Studies have also built classification models that can estimate vigilance state changes based on data collected from drivers. In the present study, we propose a system to detect vigilance level using not only a driver's EEG signals but also driving contexts as inputs. We combined a support vector machine with particle swarm optimization methods to improve classification accuracy. A simulated driving task was conducted to demonstrate the reliability of the proposed system. Twenty participants were assigned a 2-h sustained-attention driving task to identify a lead car's brake events. Our system was able to account for 84.1% of experimental reaction times with 162-ms prediction errors. A newly introduced driving context factor, road curves, improved the prediction accuracy by 2-5% with 30-80 ms smaller errors. These findings demonstrated the potential value of the proposed system for estimating driver vigilance level on a time scale of seconds.
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