Sherif Gaweesh
University of Wyoming
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Publication
Featured researches published by Sherif Gaweesh.
Frontiers in Neuroscience | 2018
Ali Darzi; Sherif Gaweesh; Mohamed Ahmed; Domen Novak
Drivers’ hazardous physical and mental states (e.g., distraction, fatigue, stress, and high workload) have a major effect on driving performance and strongly contribute to 25–50% of all traffic accidents. They are caused by numerous factors, such as cell phone use or lack of sleep. However, while significant research has been done on detecting hazardous states, most studies have not tried to identify the causes of the hazardous states. Such information would be very useful, as it would allow intelligent vehicles to better respond to a detected hazardous state. Thus, this study examined whether the cause of a driver’s hazardous state can be automatically identified using a combination of driver characteristics, vehicle kinematics, and physiological measures. Twenty-one healthy participants took part in four 45-min sessions of simulated driving, of which they were mildly sleep-deprived for two sessions. Within each session, there were eight different scenarios with different weather (sunny or snowy), traffic density and cell phone usage (with or without cell phone). During each scenario, four physiological (respiration, electrocardiogram, skin conductance, and body temperature) and eight vehicle kinematics measures were monitored. Additionally, three self-reported driver characteristics were obtained: personality, stress level, and mood. Three feature sets were formed based on driver characteristics, vehicle kinematics, and physiological signals. All possible combinations of the three feature sets were used to classify sleep deprivation (drowsy vs. alert), traffic density (low vs. high), cell phone use, and weather conditions (foggy/snowy vs. sunny) with highest accuracies of 98.8%, 91.4%, 82.3%, and 71.5%, respectively. Vehicle kinematics were most useful for classification of weather and traffic density while physiology and driver characteristics were useful for classification of sleep deprivation and cell phone use. Furthermore, a second classification scheme was tested that also incorporates information about whether or not other causes of hazardous states are present, though this did not result in higher classification accuracy. In the future, these classifiers could be used to identify both the presence and cause of a driver’s hazardous state, which could serve as the basis for more intelligent intervention systems.
Journal of transport and health | 2018
Khaled Shaaban; Sherif Gaweesh; Mohamed Ahmed
Transportation Research Board 97th Annual MeetingTransportation Research Board | 2018
Sherif Gaweesh; Irfan U Ahmed; Mohamed Ahmed; Ali Ghasemzadeh
Transportation Research Board 97th Annual MeetingTransportation Research Board | 2018
Sherif Gaweesh; Irfan U Ahmed; Mohamed Ahmed; Annalisa Piccorelli
Transportation Research Board 97th Annual MeetingTransportation Research Board | 2018
Sherif Gaweesh; Mohamed Ahmed
Archive | 2018
Fred Kitchener; Rhonda Young; Mohamed Ahmed; Guangchuan Yang; Sherif Gaweesh; Tony English; Vince Garcia; Ali Ragan; Nayel Ureña Serulle; Deepak Gopalakrishna
Journal of Sustainable Development of Transport and Logistics | 2018
Mohamed Ahmed; Sherif Gaweesh; Khaled Ksaibati; Hamidur Rahman
Archive | 2017
Mohamed Ahmed; Sherif Gaweesh; Julfiker Hossain; Sadia Sharmin; Thomas Peel
Transportation Research Board 95th Annual MeetingTransportation Research Board | 2016
Sherif Gaweesh; Mohamed Ahmed
Transportation Research Board 95th Annual MeetingTransportation Research Board | 2016
Mohamed Ahmed; Sherif Gaweesh; Khaled Ksaibati; Hamidur Rahman