MACHINE LEARNING DETEKSI KANTUK PENGEMUDI MENGGUNAKAN FACIAL NERVE GRADING SYSTEM 2.0 (FNGS2.0) PADA FLATFORM THINKSPEAK

MACHINE LEARNING DETEKSI KANTUK PENGEMUDI MENGGUNAKAN FACIAL NERVE GRADING SYSTEM 2.0 (FNGS2.0) PADA FLATFORM THINKSPEAK

Authors

  • Timbo Faritcan Parlaungan S. STMIK Subang
  • Dimas Juliana Tri N Universitas Mandiri
https://doi.org/10.47561/a.v15i1.216
This Abstract has been read 57 times

Abstract

Traffic accidents are one of the negative impacts of technological advances in the field of transportation. The increase in traffic accidents is caused by several factors where the highest factor causing traffic accidents is human/HR. Driver fatigue is a significant factor in a large number of traffic accidents, therefore, to minimize it, an alarm system is needed to detect sleepiness in real time. In this study, a sleepy eye detection system will be made based on Facial Landmarks Detection which is the development of the Facial Nerve Grading System 2.0 (FNGS2.0) using the Eye Aspect Ratio (EAR) and Mouth viewpoint proportion (MAR) methods with the Thingspeak platform which is implemented into Orange Pi PC. The input of this system is video recorded from the webcam in real time. The output of this system uses the speaker as an alarm to give a warning that the driver is detected as sleepy. The system made in this study shows that it can detect sleepy eyes well. The test results show that the system can detect 93.3% of the eyes, 96.7% of eye blinks, and 95% of the mouth. Keywords: Sleepiness, Facial landmark detection, FNGS2.0, EAR, MAR, Thingspeak

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References

Wierwille, W. W. (1995). Overview of research on driver drowsiness definition and driver drowsiness detection. In Proceedings: International Technical Conference on the Enhanced Safety of Vehicles (Vol. 1995, pp. 462-468). National Highway Traffic Safety Administratio

Bergasa, L. M., Nuevo, J., Sotelo, M. A., Barea, R., & Lopez, E. (2008). Visual monitoring of driver inattention. In Computational intelligence in automotive applications (pp. 19-37). Springer, Berlin, Heidelberg.

Alpaydin, 2009. Machine learning merupakan bagian dari artificial intelligence

Caldwell, John A., & Caldwell, J.Lynn. (2003). Fatigue in Aviation : A Guide to Staying Awake at The Stick. Farnham : Ashgate Publishing

Mahachandra, M., Yassierli, Iftikar Z., Sutalaksana, dan Kadarsah S. 2011. Sleepiness Pattern of Indonesian Professional Driver Based on Subjective Scale and Eye Closure Activity. International Journal of Basic & Applied Sciences IJBAS-IJENS. Vol. 11, No. 06

Ahmad, A. (2017). Mengenal artificial intelligence, machine learning, neural network, dan deep learning. J. Teknol. Indones., no. October, 3..

Artono, B., & Putra, R. G. (2018). Penerapan internet of things (IoT) untuk kontrol lampu menggunakan arduino berbasis web. Jurnal Teknologi Informasi Dan Terapan, 5(1), 9-16.

Menurut (Burange, dkk, 2015) Internet of Things

Wilianto, W., & Kurniawan, A. (2018). Sejarah, cara kerja dan manfaat internet of things. Matrix: Jurnal Manajemen Teknologi Dan Informatika, 8(2), 36-41

Wang, C., Daneshmand, M., Dohler, M., Mao, X., Hu, R. Q., & Wang, H. (2013). Guest Editorial-Special issue on internet of things (IoT): Architecture, protocols and services. IEEE Sensors Journal, 13(10), 3505-3510

Gordon 2009, Database atau Basis Data

Published

2022-12-31

How to Cite

[1]
T. F. Parlaungan S. and D. Juliana Tri N, “MACHINE LEARNING DETEKSI KANTUK PENGEMUDI MENGGUNAKAN FACIAL NERVE GRADING SYSTEM 2.0 (FNGS2.0) PADA FLATFORM THINKSPEAK: MACHINE LEARNING DETEKSI KANTUK PENGEMUDI MENGGUNAKAN FACIAL NERVE GRADING SYSTEM 2.0 (FNGS2.0) PADA FLATFORM THINKSPEAK”, JTIK, vol. 15, no. 1, Dec. 2022.

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