Adaptive local threshold with shape information and its application to oil sand image segmentation
This thesis is concerned with a novel local threshold segmentation algorithm for digital images incorporating shape information. In image segmentation, most local threshold algorithms are based only on intensity analysis. In many applications where an image contains objects with a similar shape, in...
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ndltd-LACETR-oai-collectionscanada.gc.ca-AEU.10048-8932011-12-13T13:52:27ZZhang, Hong (Computing Science)Shi, Jichuan2010-01-07T15:52:13Z2010-01-07T15:52:13Z2010-01-07T15:52:13Zhttp://hdl.handle.net/10048/893This thesis is concerned with a novel local threshold segmentation algorithm for digital images incorporating shape information. In image segmentation, most local threshold algorithms are based only on intensity analysis. In many applications where an image contains objects with a similar shape, in addition to the intensity information, some prior known shape attributes could be exploited to improve the segmentation. The goal of this work is to design a local threshold algorithm that includes shape information to enhance the segmentation quality. The algorithm adaptively selects a local threshold. Shape attribute distributions are learned from typical objects in ground truth images. Local threshold for each object in an image to be segmented is chosen to maximize probabilities in these shape attributes distributions. Then for the application of the oil sand image segmentation, a supervised classifier is introduced to further enhance the segmentation accuracy. The algorithm applies a supervised classifier trained by shape features to reject unwanted fragments. To meet different image segmentation intents in practical applications, we investigate a variety of combination of shape attributes and classifiers, and also look for the optimal one. Experiments on oil sand images have shown that the proposed algorithm has superior performance to local threshold approaches based on intensity information in terms of segmentation quality.1469690 bytesapplication/pdfenJichuan Shi and Hong Zhang,"Adaptive local threshodl with shape information and its application to object segmentation", IEEE Intel.Conf. on Robotics and Biomimetics, Dec. 18-22, 2009, Guilin, ChinaJichuan Shi, Hong Zhang, and Nilanjan Ray, "Solidity based local threshold for oil sand image segmentation", IEEE Intel. Conf. on Image Processing, Nov. 7-10, 2009, Cairo, Egyptthresholdshape informationAdaptive local threshold with shape information and its application to oil sand image segmentationThesisMaster of ScienceMaster'sDepartment of Computing ScienceUniversity of Alberta2010-06Ray, Nilanjan (Computing Science)Zhao, H. Vicky (Electrical and Computer Engineering) |
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threshold shape information Shi, Jichuan Adaptive local threshold with shape information and its application to oil sand image segmentation |
description |
This thesis is concerned with a novel local threshold segmentation algorithm for digital images incorporating
shape information. In image segmentation, most local threshold algorithms are based only on intensity analysis. In many applications where an image contains objects with a similar shape, in addition to the intensity information, some prior known shape attributes could be exploited
to improve the segmentation. The goal of this work is to design a local threshold algorithm that includes shape information to enhance the segmentation quality. The algorithm adaptively selects a local threshold. Shape attribute distributions are learned from typical objects in ground truth images. Local threshold for each object in an image to be segmented is chosen to maximize probabilities in
these shape attributes distributions. Then for the application of the oil sand image segmentation, a supervised classifier is introduced to further enhance the segmentation accuracy. The algorithm applies a supervised classifier trained by shape features to reject unwanted fragments. To meet different image segmentation intents in practical applications, we investigate a variety of combination of shape attributes and classifiers, and also look for the optimal one. Experiments on oil sand images
have shown that the proposed algorithm has superior performance to local threshold approaches based on intensity information in terms of segmentation quality. |
author2 |
Zhang, Hong (Computing Science) |
author_facet |
Zhang, Hong (Computing Science) Shi, Jichuan |
author |
Shi, Jichuan |
author_sort |
Shi, Jichuan |
title |
Adaptive local threshold with shape information and its application to oil sand image segmentation |
title_short |
Adaptive local threshold with shape information and its application to oil sand image segmentation |
title_full |
Adaptive local threshold with shape information and its application to oil sand image segmentation |
title_fullStr |
Adaptive local threshold with shape information and its application to oil sand image segmentation |
title_full_unstemmed |
Adaptive local threshold with shape information and its application to oil sand image segmentation |
title_sort |
adaptive local threshold with shape information and its application to oil sand image segmentation |
publishDate |
2010 |
url |
http://hdl.handle.net/10048/893 |
work_keys_str_mv |
AT shijichuan adaptivelocalthresholdwithshapeinformationanditsapplicationtooilsandimagesegmentation |
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1716389262423752704 |