Abstract

Drowsy driving is one of the common causes of road accidents resulting in injuries, even death, and significant economic losses to drivers, road users, families, and society. There have been many studies carried out in an attempt to detect drowsiness for alert systems. However, a majority of the studies focused on determining eyelid and mouth movements, which have revealed many limitations for drowsiness detection. Besides, physiological measures-based studies may not be feasible in practice because the measuring devices are often not available on vehicles and often uncomfortable for drivers. In this research, we therefore propose two efficient methods with three scenarios for doze alert systems. The former applies facial landmarks to detect blinks and yawns based on appropriate thresholds for each driver. The latter uses deep learning techniques with two adaptive deep neural networks based on MobileNet-V2 and ResNet-50V2. The second method analyzes the videos and detects driver’s activities in every frame to learn all features automatically. We leverage the advantage of the transfer learning technique to train the proposed networks on our training dataset. This solves the problem of limited training datasets, provides fast training time, and keeps the advantage of the deep neural networks. Experiments were conducted to test the effectiveness of our methods compared with other methods. Empirical results demonstrate that the proposed method using deep learning techniques can achieve a high accuracy of 97%. This study provides meaningful solutions in practice to prevent unfortunate automobile accidents caused by drowsiness.

Highlights

  • The American National Highway Traffic Safety Administration (https://www.nhtsa.gov) has an estimated 100,000 accidents reported each year mainly due to drowsy driving

  • We propose two approaches for detecting drowsiness using the techniques of facial landmark identification and deep learning

  • In the deep learning-based method, we propose the use of two adaptive deep neural networks with the transfer learning approach for drowsiness detection

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Summary

Introduction

Gov (accessed on 4 August 2021)) has an estimated 100,000 accidents reported each year mainly due to drowsy driving. This results in more than 1550 deaths, 71,000 injuries, and 12.5 billion dollars of property damage. According to the National Safety Council (https://www.nsc.org (accessed on 4 August 2021)), 13% of drivers admitted to falling asleep behind the wheel at least once a month and 4% of them resulted in accidents. The sleep questionnaire obtained from professional drivers [2] showed that more than 10.8% of drivers are drowsy while driving at least once a month, 7% had caused a traffic accident, and 18% had near-miss accidents due to drowsiness. Sleep [15] is the natural cyclical rest state of the body and mind. There are some signs that show that drivers are not awake: yawning, blinking repeatedly and difficulty opening eyes, the inability to concentrate, the inability to keep the head straight, a distracted mind, feelings of tiredness, and blurred vision

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