Adaptive k-means method for segmenting images under natural environment
This paper evaluates the performance of two conventional clustering-based segmentation methods and proposes an improved method for segmenting images captured under natural environment.Image segmentation refers to a process that separate area of interest from the background with the aim to extracts...
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my.uum.repo.119762014-08-24T03:00:36Z http://repo.uum.edu.my/11976/ Adaptive k-means method for segmenting images under natural environment Syed Abdullah, Sharifah Lailee Hambali, Hamirul ’Aini Jamil, Nursuriati QA76 Computer software This paper evaluates the performance of two conventional clustering-based segmentation methods and proposes an improved method for segmenting images captured under natural environment.Image segmentation refers to a process that separate area of interest from the background with the aim to extracts object of interest only for further image analysis.However, the segmentation process is very challenging for experiment conducted in outdoor environment due to the non-uniform illumination.Different illuminations produce different colour intensity for the object surface which leads to inaccurate segmented images.The widely used clustering-based segmentation methods are K-means and Fuzzy c -means (FCM).However, both methods have several limitations in producing good quality segmented images of objects that are exposed to the natural illumination.Therefore, this paper proposes an improved clustering-based segmentation method (Adaptive K-means) that is able to partition natural images accurately.The performance of three segmentation methods are evaluated on fruit images and compared quantitatively using similarity index (SI) and Tanimoto Coefficient (TC).The results show that Adaptive K-means has the ability to produce more accurate and perfect segmented images compared to the conventional K-means and FCM. 2013-08-28 Conference or Workshop Item PeerReviewed application/pdf en http://repo.uum.edu.my/11976/1/PID78.pdf Syed Abdullah, Sharifah Lailee and Hambali, Hamirul ’Aini and Jamil, Nursuriati (2013) Adaptive k-means method for segmenting images under natural environment. In: 4th International Conference on Computing and Informatics (ICOCI 2013), 28 -30 August 2013, Kuching, Sarawak, Malaysia. http://www.icoci.cms.net.my/proceedings/2013/TOC.html |
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This paper evaluates the performance of two
conventional clustering-based segmentation methods and proposes an improved method
for segmenting images captured under natural environment.Image segmentation refers to a process that separate area of interest from the background with the aim to extracts
object of interest only for further image
analysis.However, the segmentation process
is very challenging for experiment conducted in outdoor environment due to the non-uniform
illumination.Different illuminations produce different colour intensity for the object surface which leads to inaccurate segmented images.The widely used clustering-based segmentation methods are K-means and Fuzzy c
-means (FCM).However, both methods have several limitations in producing good quality segmented images of objects that are exposed to the natural illumination.Therefore, this paper proposes an improved clustering-based segmentation method (Adaptive K-means) that is able to partition natural images accurately.The performance of three segmentation methods are evaluated on fruit images and compared quantitatively using similarity index (SI) and Tanimoto Coefficient (TC).The results show that Adaptive K-means has the ability to produce more accurate and perfect segmented images compared to the conventional K-means and FCM. |
format |
Conference or Workshop Item |
author |
Syed Abdullah, Sharifah Lailee Hambali, Hamirul ’Aini Jamil, Nursuriati |
author_facet |
Syed Abdullah, Sharifah Lailee Hambali, Hamirul ’Aini Jamil, Nursuriati |
author_sort |
Syed Abdullah, Sharifah Lailee |
title |
Adaptive k-means method for segmenting images under natural environment |
title_short |
Adaptive k-means method for segmenting images under natural environment |
title_full |
Adaptive k-means method for segmenting images under natural environment |
title_fullStr |
Adaptive k-means method for segmenting images under natural environment |
title_full_unstemmed |
Adaptive k-means method for segmenting images under natural environment |
title_sort |
adaptive k-means method for segmenting images under natural environment |
publishDate |
2013 |
url |
http://repo.uum.edu.my/11976/1/PID78.pdf http://repo.uum.edu.my/11976/ http://www.icoci.cms.net.my/proceedings/2013/TOC.html |
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1644280788191019008 |