Development of Three Driver State Detection Models from Driving Information Using Vehicle Simulator; Normal, Drowsy and Drunk Driving

Detection of drivers' states is the essential technology not only to prevent car accidents related with their state but to develop self-driving car. Detecting technology generally uses two types of methods; physiological measures and vehicle-based measures. Vehicle-based measures have advantages compared to physiological method such as non-additional device, unsophisticated process and less computational power. For these reasons, vehicle-based measures are used for this study to build the detection system about 3 states; normal, drowsy and drunk driving. In order to achieve this purpose, three types of algorithm models are suggested using vehicle simulator experiments with twelve participants on three states; normal, drowsy and drunk. By analyzing the accuracy of each input packet data combination, the feature values, the configuration of the input data calculated through the vehicle driving data is used to derive the influential factors for predicting the driver state. The results of the models indicate high accuracy and give the possibility to be applied on detecting 3 states in real driving vehicles with the system using combination of developed models.

[1]  Didier Puzenat,et al.  Multi-user Blood Alcohol Content estimation in a realistic simulator using Artificial Neural Networks and Support Vector Machines , 2013, ESANN.

[2]  Dong Xuan,et al.  Mobile phone based drunk driving detection , 2010, 2010 4th International Conference on Pervasive Computing Technologies for Healthcare.

[3]  Nak-Tak Jeong,et al.  Drowsy behavior detection based on driving information , 2016, International Journal of Automotive Technology.

[4]  Xingjian Zhang,et al.  A Study on the Effects of Fatigue Driving and Drunk Driving on Drivers’ Physical Characteristics , 2014, Traffic injury prevention.

[5]  Yingzi Lin,et al.  Design and Experimental Study of a CNT Sensor for Measuring Alcohol Content With Short Response Delay , 2010, IEEE Sensors Journal.

[6]  John D. Lee,et al.  Assessing the Feasibility of Vehicle-Based Sensors to Detect Alcohol Impairment , 2010 .

[7]  Li Zhenlong,et al.  Drunk driving detection based on classification of multivariate time series , 2015 .

[8]  Min Ho Kwon,et al.  Development of Electric Vehicle Simulator for Performance Analysis , 2014 .

[9]  Donghan Kim,et al.  Drowsy Driving Detection Algorithm Using a Steering Angle Sensor And State of the Vehicle , 2012 .

[10]  Azim Eskandarian,et al.  Unobtrusive drowsiness detection by neural network learning of driver steering , 2001 .

[11]  Rongrong Fu,et al.  Detection of Driving fatigue by using Noncontact EMG and ECG signals Measurement System , 2014, Int. J. Neural Syst..

[12]  Min-Gi Kim,et al.  In-vehicle display HMI safety evaluation using a driving simulator , 2013 .

[13]  A. Williamson,et al.  Moderate sleep deprivation produces impairments in cognitive and motor performance equivalent to legally prescribed levels of alcohol intoxication , 2000, Occupational and environmental medicine.

[14]  A. Maclean,et al.  How do prolonged wakefulness and alcohol compare in the decrements they produce on a simulated driving task? , 2001, Accident; analysis and prevention.

[15]  Anthony D. McDonald,et al.  Real-Time Detection of Drowsiness Related Lane Departures Using Steering Wheel Angle , 2012 .

[16]  B. Tefft,et al.  Prevalence of motor vehicle crashes involving drowsy drivers, United States, 1999-2008. , 2012, Accident; analysis and prevention.

[17]  D. Dawson,et al.  Fatigue, alcohol and performance impairment , 1997, Nature.

[18]  D. Dawson,et al.  Quantifying the performance impairment associated with fatigue , 1999, Journal of sleep research.

[19]  Jarek Krajewski,et al.  Steering wheel behavior based estimation of fatigue , 2017 .

[20]  Ernst Fernando Lopes Da Silva Niedermeyer,et al.  Electroencephalography, basic principles, clinical applications, and related fields , 1982 .

[21]  Brian C Tefft Asleep at the Wheel: The Prevalence and Impact of Drowsy Driving , 2010 .