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Research Article

Driver Drowsiness Detection

Amrut Ananda Kanade1Shravan Ashok Jadhav2Ashwagandha Mohan Shelake3Sandesh Uttam Mane4P R Desai5

¹²³⁴ Shivaji University, Kolhapur, Dr.J.J.Magdum College of engineering, Jaysingpur, India. ⁵ Assistant Professor, Dept. of Information Technology, Dr.J.J.Magdum College of engineering, Jaysingpur, India

Published Online: March-April 2023

Pages: 131-134

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Abstract

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Abstract: Car crashes are the leading cause of death, killing around 1.3 million people every year. Most of these accidents were caused by distracted or drowsy drivers. The construction of highways reduces the margin of error for drivers. Countless people drive long distances on the highway every day. Lack of sleep or distractions, such as phone calls, conversations with passengers, etc. May cause an accident. This system uses convolutional neural networks to effectively assess levels of driver drowsiness and fatigue. The system can be divided into three parts: the model architecture, the mobile components and the website. It was created for logistics and ridesharing companies to track and analyze the performance of their drivers. The system is designed to create a safer environment for drivers and has become a major asset for these companies.

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