Analysis of Driver Drowsiness Using Convolution Neural Network Algorithms

Authors

  • Gazee Afzal Wani M. Tech Scholar, Department of Electronics and Communication Engineering, RIMT University, Punjab, India Author
  • Ravinder PaL Singh Technical Head, Department of Research, Innovation & Incubation, RIMT University, Punjab, India Author
  • Monika Mehra Head of Department, Department of Electronics and Communication Engineering, RIMT University, Punjab, India Author

Keywords:

PERCLOS, AI, Driver weakness, driver drowsiness, CNN Algorithm

Abstract

 Our security is the need while voyaging or  driving. One slip-up of the driver can prompt serious actual  wounds, passing and critical monetary misfortunes. These  days there are numerous frameworks accessible in market  like route frameworks, different sensors and so forth to make  driver's work simple. There are different reasons particularly  human blunders which gives ascends to the street mishaps.  Reports say that there is an enormous addition in the street  mishaps in our country since most recent couple of years.  The principal reason happening from the interstate mishaps  is the laziness and tiredness of driver while driving. It is a  vital stage to accompany a proficient procedure to recognize  sleepiness when driver feels tired. This could save enormous  number of mishaps to happen. In this framework, we  proposed to decrease the quantity of mishaps brought about  by driver weariness and hence further develop street  wellbeing. We find, track, and break down both the driver  face and eyes to quantify PERCLOS (level of eye  conclusion). 

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References

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Published

2022-04-30

How to Cite

Analysis of Driver Drowsiness Using Convolution Neural Network Algorithms . (2022). International Journal of Innovative Research in Engineering & Management, 9(2), 84–90. Retrieved from https://acspublisher.com/journals/index.php/ijirem/article/view/10920