Efficient Licence Plate Detection By Unique Edge Detection Algorithm and Smarter Interpretation Through IoT

October 28, 2017 ยท Declared Dead ยท ๐Ÿ› arXiv.org

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Authors Tejas K, Ashok Reddy K, Pradeep Reddy D, Rajesh Kumar M arXiv ID 1710.10418 Category cs.NE: Neural & Evolutionary Citations 8 Venue arXiv.org Last Checked 4 months ago
Abstract
Vehicles play a vital role in modern day transportation systems. Number plate provides a standard means of identification for any vehicle. To serve this purpose, automatic licence plate recognition system was developed. This consisted of four major steps: Pre-processing of the obtained image, extraction of licence plate region, segmentation and character recognition. In earlier research, direct application of Sobel edge detection algorithm or applying threshold were used as key steps to extract the licence plate region, which does not produce effective results when the captured image is subjected to the high intensity of light. The use of morphological operations causes deformity in the characters during segmentation. We propose a novel algorithm to tackle the mentioned issues through a unique edge detection algorithm. It is also a tedious task to create and update the database of required vehicles frequently. This problem is solved by the use of Internet of things(IOT) where an online database can be created and updated from any module instantly. Also, through IoT, we connect all the cameras in a geographical area to one server to create a universal eye which drastically increases the probability of tracing a vehicle over having manual database attached to each camera for identification purpose.
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