Publication | Closed Access
Self-Paced Dynamic Infinite Mixture Model for Fatigue Evaluation of Pilots’ Brains
73
Citations
49
References
2020
Year
EngineeringAttentionSocial SciencesFatigue ManagementData ScienceMixture AnalysisEeg Fatigue SignalsCognitive ElectrophysiologyFatigue IndicatorsCognitive NeuroscienceStatisticsCognitive ScienceFatigue EvaluationNeuroimagingFunctional Data AnalysisSignal ProcessingPilots ’ BrainsMixture DistributionEeg Signal ProcessingBrain WorkloadNeuroscience
Current brain cognitive models are insufficient in handling outliers and dynamics of electroencephalogram (EEG) signals. This article presents a novel self-paced dynamic infinite mixture model to infer the dynamics of EEG fatigue signals. The instantaneous spectrum features provided by ensemble wavelet transform and Hilbert transform are extracted to form four fatigue indicators. The covariance of log likelihood of the complete data is proposed to accurately identify similar components and dynamics of the developed mixture model. Compared with its seven peers, the proposed model shows better performance in automatically identifying a pilot's brain workload.
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