ACCURATE VEHICLE NUMBER PLATE REGOGNITION AND REAL TIME IDENTIFICATION USING RASPBERRY PI

1PG scholar, Department of ECE , Velammal Engineering College,Chennai-600066. 2Associate Professor , Department of ECE , Velammal Engineering College,Chennai-600066. ---------------------------------------------------------------------***--------------------------------------------------------------------Abstract Automatic License Plate Recognition system, detecting and recognizing the characters in the vehicle number plate and the classified characters are used further use in many traffic, security, access control applications. Accurate car plate recognition (ALPR) has complexity features due to diverse effects like light and speed. Most commonly LPR, which comes under image processing uses proprietary tools like MATLAB.

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