Driver fatigue classification with independent component by entropy rate bound minimization analysis

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Driver Fatigue Classification With Independent Component by Entropy Rate Bound Minimization Analysis in an EEG-Based EEG Based System

Abstract: This paper presents a two-class two electroencephal-ography-based based classification for classifying of driver fatigue (fatigue state versus alert state) from 43 healthy participants. The system uses independent component by entropy rate bound minimization analysis (ERBM-ICA) (ERBM ICA) for the source separation, autoregressive (AR) modeling for the features extraction, and Bayesian neural network n for the classification algorithm. The classification results demonstrate a sensitivity of 89.7%, a specificity of 86.8%, and an accuracy of 88.2%. The combination of ERBM-ICA ICA (source separator), AR (feature extractor), and Bayesian neural network (classifier) lassifier) provides the best outcome with a p-value p value <; 0.05 with the highest value of area under the receiver operating curve (AUC-ROC (AUC ROC = 0.93) against other methods such as power spectral density as feature extractor (AUC (AUC-ROC = 0.81). The results of this study study suggest the method could be utilized effectively for a countermeasure device for driver fatigue identification and other adverse event applications.


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