Contrast Enhancement Using Brightness Preserving Histogram Equalization Technique for Classification of Date Varieties

Computer vision technique is becoming popular for quality assessment of many products in food industries. Image enhancement is the first step in analyzing the images in order to obtain detailed information for the determination of quality. In this study, Brightness preserving histogram equalization...

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Main Authors: G Thomas, A Manickavasagan, L Khriji, R Al-Yahyai
Format: Article
Language:English
Published: Sultan Qaboos University 2014-06-01
Series:The Journal of Engineering Research
Subjects:
Online Access:https://journals.squ.edu.om/index.php/tjer/article/view/140
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spelling doaj-610e17abfd824b64bb26e9f852737e772020-11-25T03:25:58ZengSultan Qaboos UniversityThe Journal of Engineering Research1726-60091726-67422014-06-01111556310.24200/tjer.vol11iss1pp55-63140Contrast Enhancement Using Brightness Preserving Histogram Equalization Technique for Classification of Date VarietiesG Thomas0A Manickavasagan1L Khriji2R Al-Yahyai3Department of Electrical and Computer Engineering, Faculty of Engineering, University of Manitoba, CanadaDepartment of Soils, Water and Agricultural Engineering, College of Agricultural and Marine Sciences, Sultan Qaboos University, Al-Khoud, Muscat, Sultanate of OmanDepartment of Electrical and Computer Engineering, College of Engineering, Sultan Qaboos University, Al-Khoud, Muscat, Sultanate of OmanDeepartment of Crop Science, College of Agricultural and Marine Sciences, Sultan Qaboos University, Al-Khoud, Muscat, Sultanate of OmanComputer vision technique is becoming popular for quality assessment of many products in food industries. Image enhancement is the first step in analyzing the images in order to obtain detailed information for the determination of quality. In this study, Brightness preserving histogram equalization technique was used to enhance the features of gray scale images to classify three date varieties (Khalas, Fard and Madina). Mean, entropy, kurtosis and skewness features were extracted from the original and enhanced images. Mean and entropy from original images and kurtosis from the enhanced images were selected based on Lukka's feature selection approach. An overall classification efficiency of 93.72% was achieved with just three features. Brightness preserving histogram equalization technique has great potential to improve the classification in various quality attributes of food and agricultural products with minimum features.https://journals.squ.edu.om/index.php/tjer/article/view/140computer vision, brightness preserving histogram equalization, dates variety.
collection DOAJ
language English
format Article
sources DOAJ
author G Thomas
A Manickavasagan
L Khriji
R Al-Yahyai
spellingShingle G Thomas
A Manickavasagan
L Khriji
R Al-Yahyai
Contrast Enhancement Using Brightness Preserving Histogram Equalization Technique for Classification of Date Varieties
The Journal of Engineering Research
computer vision, brightness preserving histogram equalization, dates variety.
author_facet G Thomas
A Manickavasagan
L Khriji
R Al-Yahyai
author_sort G Thomas
title Contrast Enhancement Using Brightness Preserving Histogram Equalization Technique for Classification of Date Varieties
title_short Contrast Enhancement Using Brightness Preserving Histogram Equalization Technique for Classification of Date Varieties
title_full Contrast Enhancement Using Brightness Preserving Histogram Equalization Technique for Classification of Date Varieties
title_fullStr Contrast Enhancement Using Brightness Preserving Histogram Equalization Technique for Classification of Date Varieties
title_full_unstemmed Contrast Enhancement Using Brightness Preserving Histogram Equalization Technique for Classification of Date Varieties
title_sort contrast enhancement using brightness preserving histogram equalization technique for classification of date varieties
publisher Sultan Qaboos University
series The Journal of Engineering Research
issn 1726-6009
1726-6742
publishDate 2014-06-01
description Computer vision technique is becoming popular for quality assessment of many products in food industries. Image enhancement is the first step in analyzing the images in order to obtain detailed information for the determination of quality. In this study, Brightness preserving histogram equalization technique was used to enhance the features of gray scale images to classify three date varieties (Khalas, Fard and Madina). Mean, entropy, kurtosis and skewness features were extracted from the original and enhanced images. Mean and entropy from original images and kurtosis from the enhanced images were selected based on Lukka's feature selection approach. An overall classification efficiency of 93.72% was achieved with just three features. Brightness preserving histogram equalization technique has great potential to improve the classification in various quality attributes of food and agricultural products with minimum features.
topic computer vision, brightness preserving histogram equalization, dates variety.
url https://journals.squ.edu.om/index.php/tjer/article/view/140
work_keys_str_mv AT gthomas contrastenhancementusingbrightnesspreservinghistogramequalizationtechniqueforclassificationofdatevarieties
AT amanickavasagan contrastenhancementusingbrightnesspreservinghistogramequalizationtechniqueforclassificationofdatevarieties
AT lkhriji contrastenhancementusingbrightnesspreservinghistogramequalizationtechniqueforclassificationofdatevarieties
AT ralyahyai contrastenhancementusingbrightnesspreservinghistogramequalizationtechniqueforclassificationofdatevarieties
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