Modelling and Detection of Driver's Fatigue using Ontology
August 31, 2022 Β· Declared Dead Β· π International Conference on Knowledge Engineering and Ontology Development
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Authors
Alexandre Lambert, Manolo Dulva Hina, Celine Barth, Assia Soukane, Amar Ramdane-Cherif
arXiv ID
2208.14694
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CY,
cs.HC
Citations
1
Venue
International Conference on Knowledge Engineering and Ontology Development
Last Checked
4 months ago
Abstract
Road accidents have become the eight leading cause of death all over the world. Lots of these accidents are due to a driver's inattention or lack of focus, due to fatigue. Various factors cause driver's fatigue. This paper considers all the measureable data that manifest driver's fatigue, namely those manifested in the vehicle measureable data while driving as well as the driver's physical and physiological data. Each of the three main factors are further subdivided into smaller details. For example, the vehicle's data is composed of the values obtained from the steering wheel's angle, yaw angle, the position on the lane, and the speed and acceleration of the vehicle while moving. Ontological knowledge and rules for driver fatigue detection are to be integrated into an intelligent system so that on the first sign of dangerous level of fatigue is detected, a warning notification is sent to the driver. This work is intended to contribute to safe road driving.
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