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Main Authors: Fasanmade, Adebamigbe, Al-Bayatti, Ali H., Morden, Jarrad Neil, Caraffini, Fabio
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.13421
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author Fasanmade, Adebamigbe
Al-Bayatti, Ali H.
Morden, Jarrad Neil
Caraffini, Fabio
author_facet Fasanmade, Adebamigbe
Al-Bayatti, Ali H.
Morden, Jarrad Neil
Caraffini, Fabio
contents Risk mitigation techniques are critical to avoiding accidents associated with driving behaviour. We provide a novel Multi-Class Driver Distraction Risk Assessment (MDDRA) model that considers the vehicle, driver, and environmental data during a journey. MDDRA categorises the driver on a risk matrix as safe, careless, or dangerous. It offers flexibility in adjusting the parameters and weights to consider each event on a specific severity level. We collect real-world data using the Field Operation Test (TeleFOT), covering drivers using the same routes in the East Midlands, United Kingdom (UK). The results show that reducing road accidents caused by driver distraction is possible. We also study the correlation between distraction (driver, vehicle, and environment) and the classification severity based on a continuous distraction severity score. Furthermore, we apply machine learning techniques to classify and predict driver distraction according to severity levels to aid the transition of control from the driver to the vehicle (vehicle takeover) when a situation is deemed risky. The Ensemble Bagged Trees algorithm performed best, with an accuracy of 96.2%.
format Preprint
id arxiv_https___arxiv_org_abs_2402_13421
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Context-Aware Quantitative Risk Assessment Machine Learning Model for Drivers Distraction
Fasanmade, Adebamigbe
Al-Bayatti, Ali H.
Morden, Jarrad Neil
Caraffini, Fabio
Machine Learning
Computers and Society
Risk mitigation techniques are critical to avoiding accidents associated with driving behaviour. We provide a novel Multi-Class Driver Distraction Risk Assessment (MDDRA) model that considers the vehicle, driver, and environmental data during a journey. MDDRA categorises the driver on a risk matrix as safe, careless, or dangerous. It offers flexibility in adjusting the parameters and weights to consider each event on a specific severity level. We collect real-world data using the Field Operation Test (TeleFOT), covering drivers using the same routes in the East Midlands, United Kingdom (UK). The results show that reducing road accidents caused by driver distraction is possible. We also study the correlation between distraction (driver, vehicle, and environment) and the classification severity based on a continuous distraction severity score. Furthermore, we apply machine learning techniques to classify and predict driver distraction according to severity levels to aid the transition of control from the driver to the vehicle (vehicle takeover) when a situation is deemed risky. The Ensemble Bagged Trees algorithm performed best, with an accuracy of 96.2%.
title Context-Aware Quantitative Risk Assessment Machine Learning Model for Drivers Distraction
topic Machine Learning
Computers and Society
url https://arxiv.org/abs/2402.13421