2017
DOI: 10.24297/jac.v13i9.5804
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Improved Pso Based Driver’s Drowsiness Detection Using Fuzzy Classifier

Abstract: In this drowsiness detection framework two actions including brain and visual features are utilised to distinguish the various levels of drowsiness. These actions are provided by the EEG and EOG signal brain actions. From the EEG and EOG signals the peculiarities like mean, peak, pitch, maximum, minimum, standard deviation are assessed . In these peculiarities we decide on some best attributes - peak and pitch employing an IPSO strategy that picks up the best threshold esteem. These signals are then offered in… Show more

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“…The detection of driver's drowsiness is focused ( 6) and (7). Major accidents can be avoided by implementing driver drowsiness detection in real time.…”
Section: Literature Reviewmentioning
confidence: 99%
“…The detection of driver's drowsiness is focused ( 6) and (7). Major accidents can be avoided by implementing driver drowsiness detection in real time.…”
Section: Literature Reviewmentioning
confidence: 99%