A rule-based image segmentation method and neural network model for classifying fruit in natural environment / Hamirul‘Aini Hambali

Image segmentation and object classification processes are gaining importance in image processing applications such as in agricultural area. In general, image segmentation divides a digital image into multiple areas while object classification classifies objects into the correct categories. However,...

Full description

Saved in:
Bibliographic Details
Main Author: Hambali, Hamirul‘Aini
Format: Book Section
Language:English
Published: Institute of Graduate Studies, UiTM 2016
Subjects:
Online Access:http://ir.uitm.edu.my/id/eprint/19377/1/ABS_HAMIRUL%E2%80%98AINI%20HAMBALI%20TDRA%20VOL%209%20IGS%2016.pdf
http://ir.uitm.edu.my/id/eprint/19377/
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Universiti Teknologi Mara
Language: English
id my.uitm.ir.19377
record_format eprints
spelling my.uitm.ir.193772018-06-11T06:07:53Z http://ir.uitm.edu.my/id/eprint/19377/ A rule-based image segmentation method and neural network model for classifying fruit in natural environment / Hamirul‘Aini Hambali Hambali, Hamirul‘Aini Malaysia Image segmentation and object classification processes are gaining importance in image processing applications such as in agricultural area. In general, image segmentation divides a digital image into multiple areas while object classification classifies objects into the correct categories. However, segmentation and classification processes arechallenging for images captured in natural environment due to the existence of nonuniform illumination.Different illuminations produce different intensity on the object surface and thus lead to inaccurate segmented images. The low quality of segmented images may lead to inaccurate classification. Therefore, this thesis focuses on the improvement of segmentation methods and development of classification model for images captured in natural environment. Based on the previous researches, most existing segmentation methods are unable to accurately segment images under natural illumination. Therefore, this research has developed three improved methods which are able to segment images acquired in natural environment satisfactorily.The first method is an improved thresholding-based segmentation (TsN), which adds algorithms of inverse process and adjustment on threshold value. However, there is some inconsistency in the segmentation of lighter colourimages such as green, yellow, and yellowish-brown. Therefore, another segmentation method has been developed to address the problem. The new method, named as Adaptive K-means, is developed based on clustering approach… Institute of Graduate Studies, UiTM 2016 Book Section PeerReviewed text en http://ir.uitm.edu.my/id/eprint/19377/1/ABS_HAMIRUL%E2%80%98AINI%20HAMBALI%20TDRA%20VOL%209%20IGS%2016.pdf Hambali, Hamirul‘Aini (2016) A rule-based image segmentation method and neural network model for classifying fruit in natural environment / Hamirul‘Aini Hambali. In: The Doctoral Research Abstracts. IGS Biannual Publication, 9 (9). Institute of Graduate Studies, UiTM, Shah Alam.
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Malaysia
spellingShingle Malaysia
Hambali, Hamirul‘Aini
A rule-based image segmentation method and neural network model for classifying fruit in natural environment / Hamirul‘Aini Hambali
description Image segmentation and object classification processes are gaining importance in image processing applications such as in agricultural area. In general, image segmentation divides a digital image into multiple areas while object classification classifies objects into the correct categories. However, segmentation and classification processes arechallenging for images captured in natural environment due to the existence of nonuniform illumination.Different illuminations produce different intensity on the object surface and thus lead to inaccurate segmented images. The low quality of segmented images may lead to inaccurate classification. Therefore, this thesis focuses on the improvement of segmentation methods and development of classification model for images captured in natural environment. Based on the previous researches, most existing segmentation methods are unable to accurately segment images under natural illumination. Therefore, this research has developed three improved methods which are able to segment images acquired in natural environment satisfactorily.The first method is an improved thresholding-based segmentation (TsN), which adds algorithms of inverse process and adjustment on threshold value. However, there is some inconsistency in the segmentation of lighter colourimages such as green, yellow, and yellowish-brown. Therefore, another segmentation method has been developed to address the problem. The new method, named as Adaptive K-means, is developed based on clustering approach…
format Book Section
author Hambali, Hamirul‘Aini
author_facet Hambali, Hamirul‘Aini
author_sort Hambali, Hamirul‘Aini
title A rule-based image segmentation method and neural network model for classifying fruit in natural environment / Hamirul‘Aini Hambali
title_short A rule-based image segmentation method and neural network model for classifying fruit in natural environment / Hamirul‘Aini Hambali
title_full A rule-based image segmentation method and neural network model for classifying fruit in natural environment / Hamirul‘Aini Hambali
title_fullStr A rule-based image segmentation method and neural network model for classifying fruit in natural environment / Hamirul‘Aini Hambali
title_full_unstemmed A rule-based image segmentation method and neural network model for classifying fruit in natural environment / Hamirul‘Aini Hambali
title_sort rule-based image segmentation method and neural network model for classifying fruit in natural environment / hamirul‘aini hambali
publisher Institute of Graduate Studies, UiTM
publishDate 2016
url http://ir.uitm.edu.my/id/eprint/19377/1/ABS_HAMIRUL%E2%80%98AINI%20HAMBALI%20TDRA%20VOL%209%20IGS%2016.pdf
http://ir.uitm.edu.my/id/eprint/19377/
_version_ 1685649205277753344