Extracting feature from images by using K-Means clustering algorithm / Abdul Hakim Zainal Abidin

Image segmentation refers to process of separating out a desire region from an image. Extracting feature in images to get meaningful information is a demanding task as need to extract the information in very large images. However, existing face recognition methods would not perform well under certai...

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Main Author: Zainal Abidin, Abdul Hakim
Format: Thesis
Language:English
Published: 2016
Online Access:http://ir.uitm.edu.my/id/eprint/18098/1/TD_ABDUL%20HAKIM%20ZAINAL%20ABIDIN%20CS%2016_5.pdf
http://ir.uitm.edu.my/id/eprint/18098/
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spelling my.uitm.ir.180982019-02-28T03:46:17Z http://ir.uitm.edu.my/id/eprint/18098/ Extracting feature from images by using K-Means clustering algorithm / Abdul Hakim Zainal Abidin Zainal Abidin, Abdul Hakim Image segmentation refers to process of separating out a desire region from an image. Extracting feature in images to get meaningful information is a demanding task as need to extract the information in very large images. However, existing face recognition methods would not perform well under certain conditions. This research purposed clustering algorithm to improve process extracting feature in images to get meaningful information because it can speed up the time to process of extracting meaningful information in images due to the efficient of the algorithm that has high performance to process the image. This research scope are to develop a computer application that can extract meaningful information in images by implement KMeans clustering algorithm 10 self capture facial image will be use as the research subject to test the algorithm that will extracting meaningful information of the person. For this research, the meaningful information that will be extracting is eye feature. Methodology of this research consists of Planning and Analysis, Data Collection, Algorithm Design and Development and Testing. All the process in developing the prototype will be reveal later in this report. The result of this research show that nearly all image has accuracy more than 80% that prove that K-Means clustering algorithm are suitable as method for extracting meaningful information in images. 2016 Thesis NonPeerReviewed text en http://ir.uitm.edu.my/id/eprint/18098/1/TD_ABDUL%20HAKIM%20ZAINAL%20ABIDIN%20CS%2016_5.pdf Zainal Abidin, Abdul Hakim (2016) Extracting feature from images by using K-Means clustering algorithm / Abdul Hakim Zainal Abidin. Degree thesis, Universiti Teknologi MARA.
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
description Image segmentation refers to process of separating out a desire region from an image. Extracting feature in images to get meaningful information is a demanding task as need to extract the information in very large images. However, existing face recognition methods would not perform well under certain conditions. This research purposed clustering algorithm to improve process extracting feature in images to get meaningful information because it can speed up the time to process of extracting meaningful information in images due to the efficient of the algorithm that has high performance to process the image. This research scope are to develop a computer application that can extract meaningful information in images by implement KMeans clustering algorithm 10 self capture facial image will be use as the research subject to test the algorithm that will extracting meaningful information of the person. For this research, the meaningful information that will be extracting is eye feature. Methodology of this research consists of Planning and Analysis, Data Collection, Algorithm Design and Development and Testing. All the process in developing the prototype will be reveal later in this report. The result of this research show that nearly all image has accuracy more than 80% that prove that K-Means clustering algorithm are suitable as method for extracting meaningful information in images.
format Thesis
author Zainal Abidin, Abdul Hakim
spellingShingle Zainal Abidin, Abdul Hakim
Extracting feature from images by using K-Means clustering algorithm / Abdul Hakim Zainal Abidin
author_facet Zainal Abidin, Abdul Hakim
author_sort Zainal Abidin, Abdul Hakim
title Extracting feature from images by using K-Means clustering algorithm / Abdul Hakim Zainal Abidin
title_short Extracting feature from images by using K-Means clustering algorithm / Abdul Hakim Zainal Abidin
title_full Extracting feature from images by using K-Means clustering algorithm / Abdul Hakim Zainal Abidin
title_fullStr Extracting feature from images by using K-Means clustering algorithm / Abdul Hakim Zainal Abidin
title_full_unstemmed Extracting feature from images by using K-Means clustering algorithm / Abdul Hakim Zainal Abidin
title_sort extracting feature from images by using k-means clustering algorithm / abdul hakim zainal abidin
publishDate 2016
url http://ir.uitm.edu.my/id/eprint/18098/1/TD_ABDUL%20HAKIM%20ZAINAL%20ABIDIN%20CS%2016_5.pdf
http://ir.uitm.edu.my/id/eprint/18098/
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score 13.201949