jame 2023
DOI: 10.46632/jame/2/2/4
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Drowsiness Sensing System of Driver Based on Behavioral Characteristics to Prevent Road Accidents Using RealTime Optimized Computer Vision

Abstract: A computer vision-based system called the Drowsiness Sensing Device using OpenCV was designed to identify driver drowsiness. The technology uses video frames from a camera positioned inside a car to identify different sleepiness indicators, including the length of eye closure and head position. The Eye Aspect Ratio (EAR), which aids in trying to assess drowsiness, is determined using the OpenCV library, which is also used to extract feature points and detect eye blinks. The system also has an alarm mechanism t… Show more

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