Implementation of Vehicle Safety Distance Warning System Based on FPGA

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Abstract:

Distance is usually obtained by ultrasonic wave. This research breaks the rules. Here the information of distance is got by visual range, which has been one of popular fields for many years. In this paper, the advance alarm system uses image processing technology to calculate distance between two vehicles. The system can accurately obtain distance and alarm effectively. The system is implemented by FPGA (Filed Program Gate Array), ARM and image sensor and calculate the distance through visual range technology. The simulation environment is built by HBE-SoC-EXPERT II development platform.

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544-547

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January 2015

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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