A NOVEL APPROACH TOWARDS ROAD SAFETYBASED ON INVESTIGATIONAL SURVEY USING IMAGE PROCESSING AND USER INTERFACE SYSTEM.
Keywords:Traffic Sign Recognition (TSR), Detection, Classification, MATLAB platform, Obstacle detector, Speed regulation technique, Raspberry-pi
This paper proposes a novel system which has the capacity to automatically detect the possible ways in which a vehicle can meet an accident and implement necessary actions to ensure the safety of people inside and outside the vehicle. This project proposes a novel approach towards road sign recognition, obstacle detection and speed control technique in order to avoid road accidents. The primary process of this project is to inform the driver of traffic signs and obstacles that may have been missed due to distraction or carelessness. A camera scans the roadside for signs. A real time image processing software MATLAB identifies interprets and displays them on a panel on the vehicle dashboard through Raspberry-pi.
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