Drowsy driver detection system - via facial recognition and driving data / Nur Iman Kamila Azharudin, Hafizah Mansor and Shaila Sharmin

Azharudin, Nur Iman Kamila and Mansor, Hafizah and Sharmin, Shaila (2024) Drowsy driver detection system - via facial recognition and driving data / Nur Iman Kamila Azharudin, Hafizah Mansor and Shaila Sharmin. Malaysian Journal of Computing (MJoC), 9 (2): 6. pp. 1852-1866. ISSN 2600-8238

Abstract

According to the National Highway Traffic Safety Administration, an estimated 17.6% of all fatal crashes in the years 2017–2021 involved a drowsy driver. This study proposes a drowsy driver detection system that uses both facial recognition and vehicular data to detect if a driver is feeling sleepy behind the wheel. We aim to address a lack of works in the literature that combine data measured from the driver (image or biological data) and vehicular data for drowsy driver detection. Our primary data was collected from simulated driving sessions in which a camera was used to record test drivers’ faces while driving a virtual car in the CARLA simulator in both drowsy and non-drowsy states. The collected data consists of video of test drivers' faces from the camera and vehicular data from the simulated car. The video data was used to obtain facial features such as Mouth Over Eyes (MOE), Eyes Aspect Ratio (EAR), and Mouth Aspect Ratio (MAR), while the vehicle data yielded features such as speed, steering wheel movement and pedal readings. These features were used to train Support Vector Machine (SVM) and Random Forest (RF) models to detect drowsy drivers. The results indicate that RF is a better model to be used as compared to SVM in predictions of drowsiness in drivers with an accuracy of 96.24% and 86.85% respectively.

Metadata

Item Type: Article
Creators:
Creators
Email / ID Num.
Azharudin, Nur Iman Kamila
imankamila.a@live.iium.edu.my
Mansor, Hafizah
hafizahmansor@iium.edu.my
Sharmin, Shaila
shailasharmin@protonmail.com
Subjects: Q Science > Q Science (General) > Machine learning
T Technology > TA Engineering. Civil engineering > Applied optics. Photonics > Optical pattern recognition > Human face recognition (Computer science)
Divisions: Universiti Teknologi MARA, Shah Alam > College of Computing, Informatics and Mathematics
Journal or Publication Title: Malaysian Journal of Computing (MJoC)
UiTM Journal Collections: UiTM Journal > Malaysian Journal of Computing (MJoC)
ISSN: 2600-8238
Volume: 9
Number: 2
Page Range: pp. 1852-1866
Keywords: Driving Data, Drowsy Driver Detection, Facial Recognition, Machine Learning Technique
Date: October 2024
URI: https://ir.uitm.edu.my/id/eprint/105182
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