A review: Control area network (CAN) based Intelligent vehicle system for driver assistance using advanced RISC machines (ARM)

Automotive Electronics sector is now a day's becoming more in demand due to its increasing technology. Most of luxurious cars consist of automatic controls for different parameters present in the car surrounding. As more and more applications are available of on-vehicle information system, the connection between the vehicle bus network and information system is becoming a trend. Basically in automobile industries CAN protocol is used for communication. The proposed system presents the development and implementation of a digital driving system for a semi-autonomous vehicle to improve the driver-vehicle interface and can provide technological development for future applications in vehicle's information system. The system is able to monitor Road lane violation, Drowsiness and Alcohol with the help of sensors and webcam which can minimize road accidents. System contains controller block designed using ARM, alcohol and Eye-blink sensors, CAN controller, Webcam, GPS and GSM modules.

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