Authors :
Aathiswaran B; Kishore M; Kishore Kumar P; Srinivasan A
Volume/Issue :
Volume 10 - 2025, Issue 2 - February
Google Scholar :
https://tinyurl.com/2mu3nhj8
Scribd :
https://tinyurl.com/bddvmn5u
DOI :
https://doi.org/10.5281/zenodo.14908863
Abstract :
Fatigue detection is essential for ensuring safety and efficiency in various fields, particularly in transportation
and workplace environments. This project focuses on developing a real-time fatigue detection system using computer
vision and machine learning techniques. By analyzing head movements and eye activity, the system identifies early signs of
drowsiness and provides timely alerts.
The project utilizes OpenCV and Media Pipe for real-time facial feature tracking and analysis. These technologies enable
precise detection of eye behavior and head posture, ensuring reliable fatigue assessment. Machine learning techniques
further enhance the accuracy of the system, making it adaptable to different environments and lighting conditions. This
study includes case studies and experimental evaluations to assess the effectiveness of the proposed approach. By
examining real-world applications, the project aims to identify best practices and optimization strategies for future
development. Ultimately, this research contributes to the advancement of automated fatigue monitoring systems, helping
to improve safety and productivity in high-risk settings.
Keywords :
Fatigue Detection, Digital currencies, Eye Openness Monitoring, Computer Vision Technology, Alarm System, Prevention.
References :
- Alhussein, A., & Kassem, M., “A Survey of Driver Drowsiness Detection Systems”, IEEE Access, 2018.
- Aghababaei, M., & Alireza, S., “Detection of Driver Drowsiness Using Eye Gaze and Blink Behaviour”, Journal of Computational Vision, 2017.
- Barros, P. L., & Silva, A. M., "Real-Time Drowsiness Detection System for Driver Safety", International Conference on Computer Vision, 2020.
- Dandekar, S., & Sood, P., “Improvement in Driver Drowsiness Detection Systems through Machine Learning Models”, International Journal of Applied Research in Engineering and Technology, 2018.
- Gómez, A., & Lopez, R., "Fatigue Detection Systems Using Machine Learning in Real-Time", Journal of Safety Research, 2021.
- Jafar Ali Khan, Hemachandra Jagadabhi, Vinay K, Rajesh Babu Dasari, "Proactive Fatigue Detection for Improved Road Safety and Driver Awareness", International Journal of Computer Applications, 2025.
- Kumar, V., & Singh, M., "Fatigue Detection Using Eye Tracking and Gaze Patterns", Journal of Computer Vision Applications, 2020.
- Patel, S., & Soni, M., "Automated Real-Time Fatigue Detection for Safety in Transportation", Journal of Transportation Technologies, 2021.
- Wang, Y., & Li, H., "Real-Time Monitoring of Driver Drowsiness Using Eye Movement Analysis", International Journal of Computer Applications in Technology, 2019.
- Zhang, L., & Li, X., "Multimodal Fatigue Detection System for Transportation Safety", Journal of Safety Science and Technology, 2017.
Fatigue detection is essential for ensuring safety and efficiency in various fields, particularly in transportation
and workplace environments. This project focuses on developing a real-time fatigue detection system using computer
vision and machine learning techniques. By analyzing head movements and eye activity, the system identifies early signs of
drowsiness and provides timely alerts.
The project utilizes OpenCV and Media Pipe for real-time facial feature tracking and analysis. These technologies enable
precise detection of eye behavior and head posture, ensuring reliable fatigue assessment. Machine learning techniques
further enhance the accuracy of the system, making it adaptable to different environments and lighting conditions. This
study includes case studies and experimental evaluations to assess the effectiveness of the proposed approach. By
examining real-world applications, the project aims to identify best practices and optimization strategies for future
development. Ultimately, this research contributes to the advancement of automated fatigue monitoring systems, helping
to improve safety and productivity in high-risk settings.
Keywords :
Fatigue Detection, Digital currencies, Eye Openness Monitoring, Computer Vision Technology, Alarm System, Prevention.