Driver Assistance System Based on Video Image Processing for Emergency Case in Tunnel
American Journal of Networks and Communications
Volume 4, Issue 1, February 2015, Pages: 5-9
Received: Feb. 10, 2015;
Accepted: Mar. 5, 2015;
Published: Mar. 13, 2015
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Huthaifa Ahmad Al_Issa, Department of Electrical and Electronics Engineering, Faculty of Engineering, Al-Balqa Applied University, Irbid Al-Huson, Jordan
This paper proposes architecture for detecting accidents system based on image processing techniques for emergency case in tunnel, as well as the technical challenges that had to be overcome to ensure that technology successfully operated under all conditions. The advantages of this method include such benefits as Non-use of sensors, low cost and easy setup and relatively good accuracy and speed. Because this method has been implemented using image processing and MATLAB software, production costs are low while achieving high speed and accuracy. Method presented in this research is simple and there is no need to use sensors that have been commonly used to detect traffic in the past. This research can be enhanced by helping out the driver assistance system, this is accomplished by informing the public traffic about accidents in specific areas so that they can avoid those routes.
Huthaifa Ahmad Al_Issa,
Driver Assistance System Based on Video Image Processing for Emergency Case in Tunnel, American Journal of Networks and Communications.
Vol. 4, No. 1,
2015, pp. 5-9.
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