License Plate Recognition System: Localization for Kenya
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Date
2000Author
Wambui, P.N.
Opiyo, E.T.O.
Rodrigues, A.J.
Type
ArticleLanguage
enMetadata
Show full item recordAbstract
This paper describes the development of a reliable and accurate License Plate Recognition
(LPR) system. In view of its potential application in traffic monitoring systems and highway toll
collection, LPR systems have recently attracted considerable interest as part of an Intelligent
Transport System. While much commercial work has been done for Iranian, Korean, Chinese,
European and US license plates little work has been done for developing country LPR systems.
In general LPR consists of four stages; Image acquisition and processing, License plate
extraction, License plate segmentation and License plate recognition. This paper utilizes
algorithms for the extraction stage based on vertical edge detection. The segmentation stage is
performed using two algorithms: division by eight and the horizontal and vertical projection
profile also known as the peak to valley method. Finally two approaches of performing
recognition are investigated namely template matching and artificial neural networks,
particularly the multilayer perceptron.
The system was implemented using Matlab 7.6 (R2008a), Microsoft Visual Studio and
Wamp Server tools. The performance of the system on about seventy real images resulted in a
predictive accuracy of about 86.99% using the template matching recognition algorithm after
segmenting with the peak to valley method.
Publisher
School of Computing and Informatics