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Viplov Jiwnani
Tanmay Mathur, Sona Ameta
Vidhyanshi Khetpaliya, Charu Kavadia


This document is a complete report on the research conducted and the project made in the field of computer engineering to develop a system for driver drowsiness detection to prevent accidents from happening because of driver drowsiness. Drowsiness is one of the main causes leading to road accidents. They can be prevented by taking the effort to get enough sleep before driving or having a rest when the signs of drowsiness occur. Thus, it is not comfortable to be used in real-time driving. This project describes how to detect the eyes and mouth in a video recorded with the help of a camera. The report proposed the results and solutions to the limited implementation of the various techniques that are introduced in the project.


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