Evaluation of Drowsiness by HRV Measures : Proposal of prediction method of low arousal state

5th International Workshop on Computational Intelligence & Applications Proceedings : IWCIA 2009 Page 348-353 published_at 2009-11
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Title ( eng )
Evaluation of Drowsiness by HRV Measures : Proposal of prediction method of low arousal state
Creator
Murata Atsuo
Hiramatsu Yasutaka
Source Title
5th International Workshop on Computational Intelligence & Applications Proceedings : IWCIA 2009
Start Page 348
End Page 353
Abstract
The aim of this study was to propose a useful prediction method of drowsy state of drivers, so that the result is applicable to the development of ITS (Intelligent Transportation System) that can warn drivers of their low arousal state and to prevent driving under low arousal level from occurring. The EEG (electroencephalography) and ECG (electrocardiography) during a monotonous task was measured, and it was investigated how these measures change under the low arousal (drowsy) state. The EEG measurement was added to in order to monitor arousal level more the time series of mean power frequency of EEG was plotted on X-bar control chart. Heart rate variability (HRV) measure RRV3 were derived on the basis of R-R intervals (interbeat intervals) obtained from ECG. Using a Bayesian probability, we tried to predict the timing when the participant actually felt drowsy. As a result, the prediction accuracy differed by the state of participant. When the drowsiness of participant was remarkable, the prediction method was effective to some extent. On the other hand, the proposed method could not predict the drowsy state reliably when the participant did not feel drowsiness to a larger extent.
NDC
Technology. Engineering [ 500 ]
Language
eng
Resource Type conference paper
Publisher
IEEE SMC Hiroshima Chapter
Date of Issued 2009-11
Rights
(c) Copyright by IEEE SMC Hiroshima Chapter.
Publish Type Version of Record
Access Rights open access
Source Identifier
[ISSN] 1883-3977
[URI] http://www.hil.hiroshima-u.ac.jp/iwcia/2009/