This content is not included in
your SAE MOBILUS subscription, or you are not logged in.
Driving Fatigue Detection based on Blink Frequency and Eyes Movement
Technical Paper
2017-01-1443
ISSN: 0148-7191, e-ISSN: 2688-3627
This content contains downloadable datasets
Annotation ability available
Sector:
Language:
English
Abstract
The development of the vehicle quantity and the transportation system accompanies the rise of traffic accidents. Statistics shows that nearly 35-45% traffic accidents are due to drivers’ fatigue. If the driver’s fatigue status could be judged in advance and reminded accurately, the driving safety could be further improved. In this research, the blink frequency and eyes movement information are monitored and the statistical method was used to assess the status of the driving fatigue. The main tasks include locating the edge of the human eyes, obtaining the distance between the upper and lower eyelids for calculating the frequency of the driver's blink. The velocity and position of eyes movement are calculated by detecting the pupils’ movement. The normal eyes movement model is established and the corresponding database is updated constantly by monitoring the driver blink frequency and eyes movement during a certain period of time. The real-time data and the model calculation data are compared, and the warning is given when the eyes movement flat rate is consistent with the sleep characteristics. The study found that when the driver is in the stage of fatigue driving, the blink frequency and the saccade velocity standard deviation will be reduced. On this basis, the judgment accuracy of the driver's driving condition can be accepted. This research would play a positive role in promoting the development of real-time detection technology of driving fatigue.
Authors
Citation
ZiLin, L., Tan, G., Pang, Y., TANG, Y. et al., "Driving Fatigue Detection based on Blink Frequency and Eyes Movement," SAE Technical Paper 2017-01-1443, 2017, https://doi.org/10.4271/2017-01-1443.Data Sets - Support Documents
Title | Description | Download |
---|---|---|
Unnamed Dataset 1 | ||
Unnamed Dataset 2 | ||
Unnamed Dataset 3 | ||
Unnamed Dataset 4 | ||
Unnamed Dataset 5 |
Also In
References
- Organization WH World health statistics 2008 2008
- Foundation NS State of the states report on drowsy driving 2007
- Klauer SG , Dingus TA , Neale TV , Sudweeks J , Ramsey , DJ The impact of driver inattention on near-crash/crash risk: an analysis using the 100-car naturalistic driving study data U.s.department of Transportation Washington D.c. 2006
- Coplen M , Sussman D Fatigue and alertness in the united states railroad industry - part 2: fra's or&d fatigue research program China Soft Science 2000
- Tan G.L. , Huang X.J. Study on the problem of vehicle driving fatigue Journal of Guangxi University of Technology 2005 16 88 91
- Xin W. the Ministry of public security informed the national road traffic accident in 2004 Car and safety 2005 71 72
- Wu S.B. , Gao L. , Wang , L.A. a Study of Driving Fatigue Detection based on EEG Journal of Beijing Institute of Technology 2009 1072 1075
- Peng J.Q. , Wu P.D , Yin G. Fatigue Driving Characteristics of EEG Research Journal of Beijing Institute of Technology 2007 27 585 589
- Ahlstrom C , Nyström M , Holmqvist K , Fors C , Sandberg D , Anund A , Kecklund G , Åkerstedt T Fit-for-duty test for estimation of drivers’sleepiness level: eyes movements improve the sleep/wake predictor Transportation Research Part C Emerging Technologies 2013 26 20 32
- King LM , Nguyen HT , Lal SK Early Driver Fatigue Detection from Electroencephalography Signals Using Artificial Neural Networks Conference: International Conference of the IEE.. 2006 2187 2190
- Liu J. Based on the Human Eye Detection of Driving Fatigue Detection Research Shenyang Technology University 2015 71
- GUO K , GUAN H Modelling of driver/vehicle directional control system VEHICLE SYST DYN 1993 22 141 184
- Lenskiy AA , Lee JS Driver’s eye blinking detection using novel color and texture segmentation algorithms International Journal of Control Automation & Systems 2012 10 317 327
- Liao C.J. , Qin Q. , Huang X.Y. a Summary of the Active Safety Technology of Automobile in the Center of Human The computer simulation 2004 152 156
- Mao Z. Based on the Analysis of Driver's Physiological Characteristics of Driving Fatigue State Identification Method Research Wuhan University of Technology 2006 86
- Chen Y. , Huang Q. , Liu X. , Zhang C.H. a Study on the Detection Method of Driving Fatigue in all Weather 2009 636 640
- Ran HZ , Zhou JL , Wang L Face Detection in Color Image Journal of Chengdu Textile College 2002 1 696 706
- Brown JG , Wieroney M , Zhu LBS , Warren J , Scharf SM , Hinds PS Measuring subjective sleepiness at work in hospital nurses: validation of a modified delivery format of the karolinska sleepiness scale 2014 18 731 739
- Ingre M , Akerstedt TB , Anund A , Kecklund G Subjective sleepiness, simulated driving performance and blink duration: examining individual differences J SLEEP RES 2006 15 47 53
- Qu X.L. Research on Fatigue Driving Detection Method based on Steering Operation and Vehicle Condition Tsinghua University 2012
- Guo Z.Z. , Tan Y.A. , Ma G.Z. , Pan Y.R. , Chen C.S. the Identification Method of Driving Mental Fatigue based on BP Neural Network Journal of Harbin Institute of Technology 2014 46 118 121