Monitoring driver fatigue using a single-channel electroencephalographic device: A validation study by gaze-based, driving performance, and subjective data

2017 ◽  
Vol 109 ◽  
pp. 62-69 ◽  
Author(s):  
José M. Morales ◽  
Carolina Díaz-Piedra ◽  
Héctor Rieiro ◽  
Joaquín Roca-González ◽  
Samuel Romero ◽  
...  
Author(s):  
Leo J. Gugerty ◽  
William C. Tirre

The first experiment found that varying the rate of road hazards in a personal-computer-based driving simulator had no effect on subjects' situation awareness, as measured in the simulator. Thus, setting a high rate of hazards does not distort subjects' situation awareness. In the second experiment, the situation awareness test was found to predict driving performance in a realistic simulator. Individual differences in situation awareness were correlated with working memory and psychomotor abilities.


2020 ◽  
Vol 2020 ◽  
pp. 1-10
Author(s):  
Qi Zhang ◽  
Chaozhong Wu ◽  
Hui Zhang

Driver fatigue level was considered an accumulated result contributed by circadian rhythms, hours of sleep before driving, driving duration, and break time during driving. This article presents an investigation into the regression model between driver fatigue level and the above four time-related variables. With the cooperation of one commercial transportation company, a Naturalistic Driving Study (NDS) was conducted, and NDS data from thirty-four middle-aged drivers were selected for analysis. With regard to the circadian rhythms, commercial drivers operated the vehicle and started driving at around 09:00, 14:00, and 21:00, respectively. Participants’ time of sleep before driving is also surveyed, and a range from 4 to 7 hours was selected. The commercial driving route was the same for all participants. After getting the fatigue level of all participants using the Karolinska Sleepiness Scale (KSS), the discrete KSS data were converted into consecutive value, and curve fitting methods were adopted for modeling. In addition, a linear regression model was proposed to represent the relationship between accumulated fatigue level and the four time-related variables. Finally, the prediction model was verified by the driving performance measurement: standard deviation of lateral position. The results demonstrated that fatigue prediction results are significantly relevant to driving performance. In conclusion, the fatigue prediction model proposed in this study could be implemented to predict the risk driving period and the maximum consecutive driving time once the driving schedule is determined, and the fatigue driving behavior could be avoided or alleviated by optimizing the driving and break schedule.


Author(s):  
Jeffrey M. Rogers ◽  
Jenny Jensen ◽  
Joaquin T. Valderrama ◽  
Stuart J. Johnstone ◽  
Peter H. Wilson

2021 ◽  
Vol 11 (17) ◽  
pp. 8249
Author(s):  
Adrian Hajducik ◽  
Stefan Medvecky ◽  
Slavomir Hrcek ◽  
Jaromir Klarak

Driver fatigue can be manifested by various highly dangerous direct and indirect symptoms, for example, inattention or lack of concentration. The aim of the study was to compare the behavior of young drivers, older drivers and professional drivers, particularly in situations where they feel fatigued. In the online questionnaire, drivers answered various questions which analysed their responsibility of driving a car during fatigue, the optimum temperature in the car, or experience with microsleep. The sample of drivers consisted of 507 women and 951 men in Slovakia. Young drivers are more responsible when driving during fatigue, while professional drivers take risks, break the law, and drive tired more often. A total of 25% of all drivers experience fatigue more than once a week. Adverse results were found in connection with driving and fatigue, where more than 42% of respondents stated that their duties require them to drive even when they are tired. A total of 27% of drivers have had microsleep while driving. The survey showed that drivers are aware that thermoneutral temperature in a car interior can improve driving performance and a lower temperature can positively affect a person’s attention. The regulation of the temperature in the car was helpful for 75% of all drivers when they felt tired, and more than 97% of the drivers lowered the temperature in the interior of the vehicle in order to achieve a better concentration. In addition to standard statistical methods, a neural network was used for the evaluation of the questionnaire, which sought for individual connections and subsequent explanations for the hypotheses. The applied neural network was able to determine parameters such as the age of the driver and the annual raid as the riskiest and closely associated with the occurrence of microsleep between drivers.


Author(s):  
Gheorghe-Daniel Voinea ◽  
Cristian Cezar Postelnicu ◽  
Mihai Duguleana ◽  
Gheorghe-Leonte Mogan ◽  
Radu Socianu

Technological advances are changing every aspect of our lives, from the way we work, to how we learn and communicate. Advanced driver assistance systems (ADAS) have seen an increased interest due to the potential of ensuring a safer environment for all road users. This study investigates the use of a smartphone-based ADAS in terms of driving performance and driver acceptance, with the aim of improving road safety. The mobile application uses both cameras of a smartphone to monitor the traffic scene and the driver’s head orientation, and offers an intuitive user interface that can display information in a standard mode or in augmented reality (AR). A real traffic experiment consisting of two driving conditions (a baseline scenario and an ADAS scenario), was conducted in Brasov, Romania. Objective and subjective data were recorded from twenty-four participants with a valid driver’s license. Results showed that the use of the ADAS influences the driving performance, as most of them adopted an increased time headway and lower mean speeds. The technology acceptance model (TAM) questionnaire was used to assess the users’ acceptance of the proposed driver assistance system. The results showed significant interrelations between acceptance factors, while the hierarchical regression analysis indicates that the variance of behavioral intention (BI) can be predicted by attitude toward behavior.


2012 ◽  
Vol 18 (Suppl 1) ◽  
pp. A201.1-A201
Author(s):  
CC McDonald ◽  
Y -C Lee ◽  
JB Tanenbaum ◽  
T Seacrist ◽  
FK Winston

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