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Convolutional neural network-based real-time drowsy driver detection for accident prevention

Nippon DattaChittagong University of Engineering and TechnologyTanjim MahmudRangamati Science and Technology UniversityManoara BegumPort City International UniversityMohammad Tarek AzizChittagong University of Engineering and TechnologyDilshad IslamChattogram Veterinary and Animal Sciences UniversityMd. Faisal Bin Abdul AzizComilla UniversityKhudaybergen KochkarovTashkent State University of EconomyTemur EshchanovUrgech State University Named After Abu Rayhon BeruniValisher Sapayev Odilbek UgluSobir ParmanovNational University of UzbekistanMohammad Shahadat HossainUniversity of ChittagongKarl AnderssonLulea University of Technology
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Abstract

Drowsy driving significantly threatens road safety, contributing to many accidents globally. This paper presents a convolutional neural network (CNN)-based real-time drowsy driver detection system aimed at preventing such accidents, particularly for deployment in Android applications. We propose a lightweight CNN architecture that effectively identifies drowsiness and microsleep episodes by categorizing driver facial expressions into four distinct categories: close-eye expressions, open-eye expressions, yawns, and no yawns. Our model, which employs facial landmark detection and various pre-processing techniques to enhance accuracy, achieves an impressive 96.6% accuracy. This performance surpasses several popular CNN architectures, including VGG16, VGG19, MobileNetV2, ResNet50, and DenseNet121. Notably, our proposed model is highly efficient, with only 0.4 million parameters and a memory requirement of 1.51 MB, making it ideal for real-time applications. The comparative analysis highlights the superior balance between accuracy and resource efficiency of our model, demonstrating its potential for practical deployment in reducing accidents caused by driver fatigue.

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