Real-time Malaysian automatic license plate recognition using hybrid fuzzy logic with skew detection and correction method

Automatic License Plate Recognition (ALPR) system is a mass surveillance method that uses optical character recognition on images to read the license plates on vehicles. This system has been used widely overseas. However, the different forms of Malaysian license plates still a problem that makes thi...

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Main Author: Al-Faqheri, Wisam Salah
Format: Thesis
Language:English
Published: 2010
Subjects:
Online Access:http://psasir.upm.edu.my/id/eprint/40711/1/FK%202010%206R.pdf
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spelling my-upm-ir.407112015-09-28T00:52:29Z Real-time Malaysian automatic license plate recognition using hybrid fuzzy logic with skew detection and correction method 2010-01 Al-Faqheri, Wisam Salah Automatic License Plate Recognition (ALPR) system is a mass surveillance method that uses optical character recognition on images to read the license plates on vehicles. This system has been used widely overseas. However, the different forms of Malaysian license plates still a problem that makes this system harder to be applied locally. The proposed license plate recognition algorithm is aimed to recognize the different Malaysian license plates by employing two methods: Fuzzy Logic to recognize standard license plate (the plates which consist of characters and numbers), and Template Matching to recognize non-standard plates (the plates which consist of non-standard word and numbers). Mathematical Morphology is the first preprocessing step used to enhance Malaysian license plate image quality, by removing noise from the binarized image. The second step is to remove license plate borders by implementing Mathematical Morphology process with conditional statements. The third preprocessing step is a new Skew Detection and Correction (SDC) method proposed to correct the skewness of license plate image. License plate level testing follows the preprocessing step in order to check if the license plate is one or two rows (the license plate elements are in one or two rows). The standard and non-standard test is performed by checking if the input image is representing a standard or a non-standard plate. Vertical scanning (VS) and horizontal scanning (HS) have been used to segment license plate image elements. Segmentation process is the step where license plate elements are segmented. The next step is to forward the extracted characters and numbers to the Fuzzy Logic system to be recognized in case of standard license plates input, while forward nonstandard words images to the Template Matching in order to be recognized in case of non-standard license plates input. The output of recognition step will be a string of numbers and characters which represent the recognized license plate. The proposed M-LPR algorithm has shown an impressive result to recognize different Malaysian license plate forms. Fuzzy Logic system has been tested on standard license plate shows 92.16% recognition accuracy and 0.88 second processing time. The Template Matching shows 92% recognition accuracy and 1.06 second processing time when it is tested on non-standard license plate. The proposed SDC method has been evaluated by comparing with different other existing SDC methods such as Hough Transform, Projection Profile, Mathematical Morphology and Bounding Box methods. Fuzzy logic Automobiles - Licenses - Malaysia Automobile license plates - Malaysia 2010-01 Thesis http://psasir.upm.edu.my/id/eprint/40711/ http://psasir.upm.edu.my/id/eprint/40711/1/FK%202010%206R.pdf application/pdf en public masters Universiti Putra Malaysia Fuzzy logic Automobiles - Licenses - Malaysia Automobile license plates - Malaysia
institution Universiti Putra Malaysia
collection PSAS Institutional Repository
language English
topic Fuzzy logic
Automobiles - Licenses - Malaysia
Automobile license plates - Malaysia
spellingShingle Fuzzy logic
Automobiles - Licenses - Malaysia
Automobile license plates - Malaysia
Al-Faqheri, Wisam Salah
Real-time Malaysian automatic license plate recognition using hybrid fuzzy logic with skew detection and correction method
description Automatic License Plate Recognition (ALPR) system is a mass surveillance method that uses optical character recognition on images to read the license plates on vehicles. This system has been used widely overseas. However, the different forms of Malaysian license plates still a problem that makes this system harder to be applied locally. The proposed license plate recognition algorithm is aimed to recognize the different Malaysian license plates by employing two methods: Fuzzy Logic to recognize standard license plate (the plates which consist of characters and numbers), and Template Matching to recognize non-standard plates (the plates which consist of non-standard word and numbers). Mathematical Morphology is the first preprocessing step used to enhance Malaysian license plate image quality, by removing noise from the binarized image. The second step is to remove license plate borders by implementing Mathematical Morphology process with conditional statements. The third preprocessing step is a new Skew Detection and Correction (SDC) method proposed to correct the skewness of license plate image. License plate level testing follows the preprocessing step in order to check if the license plate is one or two rows (the license plate elements are in one or two rows). The standard and non-standard test is performed by checking if the input image is representing a standard or a non-standard plate. Vertical scanning (VS) and horizontal scanning (HS) have been used to segment license plate image elements. Segmentation process is the step where license plate elements are segmented. The next step is to forward the extracted characters and numbers to the Fuzzy Logic system to be recognized in case of standard license plates input, while forward nonstandard words images to the Template Matching in order to be recognized in case of non-standard license plates input. The output of recognition step will be a string of numbers and characters which represent the recognized license plate. The proposed M-LPR algorithm has shown an impressive result to recognize different Malaysian license plate forms. Fuzzy Logic system has been tested on standard license plate shows 92.16% recognition accuracy and 0.88 second processing time. The Template Matching shows 92% recognition accuracy and 1.06 second processing time when it is tested on non-standard license plate. The proposed SDC method has been evaluated by comparing with different other existing SDC methods such as Hough Transform, Projection Profile, Mathematical Morphology and Bounding Box methods.
format Thesis
qualification_level Master's degree
author Al-Faqheri, Wisam Salah
author_facet Al-Faqheri, Wisam Salah
author_sort Al-Faqheri, Wisam Salah
title Real-time Malaysian automatic license plate recognition using hybrid fuzzy logic with skew detection and correction method
title_short Real-time Malaysian automatic license plate recognition using hybrid fuzzy logic with skew detection and correction method
title_full Real-time Malaysian automatic license plate recognition using hybrid fuzzy logic with skew detection and correction method
title_fullStr Real-time Malaysian automatic license plate recognition using hybrid fuzzy logic with skew detection and correction method
title_full_unstemmed Real-time Malaysian automatic license plate recognition using hybrid fuzzy logic with skew detection and correction method
title_sort real-time malaysian automatic license plate recognition using hybrid fuzzy logic with skew detection and correction method
granting_institution Universiti Putra Malaysia
publishDate 2010
url http://psasir.upm.edu.my/id/eprint/40711/1/FK%202010%206R.pdf
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