作者
Adebamigbe Fasanmade, Ying He, Ali H Al-Bayatti, Jarrad Neil Morden, Suleiman Onimisi Aliyu, Ahmed S Alfakeeh, Alhuseen Omar Alsayed
发表日期
2020/5/14
期刊
IEEE Access
卷号
8
页码范围
95197-95207
出版商
IEEE
简介
Detecting and classifying driver distractions is crucial in the prevention of road accidents. These distractions impact both driver behavior and vehicle dynamics. Knowing the degree of driver distraction can aid in accident prevention techniques, including transitioning of control to a level 4 semi-autonomous vehicle, when a high distraction severity level is reached. Thus, enhancement of Advanced Driving Assistance Systems (ADAS) is a critical component in the safety of vehicle drivers and other road users. In this paper, a new methodology is introduced, using an expert knowledge rule system to predict the severity of distraction in a contiguous set of video frames using the Naturalistic Driving American University of Cairo (AUC) Distraction Dataset. A multi-class distraction system comprises the face orientation, drivers' activities, hands and previous driver distraction, a severity classification model is developed as a …
引用总数
2020202120222023202413936