Geometric statistically based methods for the segmentation and registration of medical imagery
Medical image analysis aims at developing techniques to extract information from medical images. Among its many sub-fields, image registration and segmentation are two important topics. In this report, we present four pieces of work, addressing different problems as well as coupling them into a unif...
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ndltd-GATECH-oai-smartech.gatech.edu-1853-396442013-01-07T20:37:38ZGeometric statistically based methods for the segmentation and registration of medical imageryGao, YiComputer visionMedical image analysisImage segmentationImage registrationShape analysisImaging systems in medicineImage analysisImage registrationImage processing Digital techniquesMedical image analysis aims at developing techniques to extract information from medical images. Among its many sub-fields, image registration and segmentation are two important topics. In this report, we present four pieces of work, addressing different problems as well as coupling them into a unified framework of shape based image segmentation. Specifically: 1. We link the image registration with the point set registration, and propose a globally optimal diffeomorphic registration technique for point set registration. 2. We propose an image segmentation technique which incorporates the robust statistics of the image and the multiple contour evolution. Therefore, the method is able to simultaneously extract multiple targets from the image. 3. By combining the image registration, statistical learning, and image segmentation, we perform a shape based method which not only utilizes the image information but also the shape knowledge. 4. A multi-scale shape representation based on the wavelet transformation is proposed. In particular, the shape is represented by wavelet coefficients in a hierarchical way in order to decompose the shape variance in multiple scales. Furthermore, the statistical shape learning and shape based segmentation is performed under such multi-scale shape representation framework.Georgia Institute of Technology2011-07-06T16:49:05Z2011-07-06T16:49:05Z2010-12-22Dissertationhttp://hdl.handle.net/1853/39644 |
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Computer vision Medical image analysis Image segmentation Image registration Shape analysis Imaging systems in medicine Image analysis Image registration Image processing Digital techniques |
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Computer vision Medical image analysis Image segmentation Image registration Shape analysis Imaging systems in medicine Image analysis Image registration Image processing Digital techniques Gao, Yi Geometric statistically based methods for the segmentation and registration of medical imagery |
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Medical image analysis aims at developing techniques to extract information from medical images. Among its many sub-fields, image registration and segmentation are two important topics. In this report, we present four pieces of work, addressing different problems as well as coupling them into a unified framework of shape based image segmentation. Specifically:
1. We link the image registration with the point set registration, and propose a globally optimal diffeomorphic registration technique for point set registration.
2. We propose an image segmentation technique which incorporates the robust statistics of the image and the multiple contour evolution. Therefore, the method is able to simultaneously extract multiple targets from the image.
3. By combining the image registration, statistical learning, and image segmentation, we perform a shape based method which not only utilizes the image information but also the shape knowledge.
4. A multi-scale shape representation based on the wavelet transformation is proposed. In particular, the shape is represented by wavelet coefficients in a hierarchical way in order to decompose the shape variance in multiple scales. Furthermore, the statistical shape learning and shape based segmentation is performed under such multi-scale shape representation framework. |
author |
Gao, Yi |
author_facet |
Gao, Yi |
author_sort |
Gao, Yi |
title |
Geometric statistically based methods for the segmentation and registration of medical imagery |
title_short |
Geometric statistically based methods for the segmentation and registration of medical imagery |
title_full |
Geometric statistically based methods for the segmentation and registration of medical imagery |
title_fullStr |
Geometric statistically based methods for the segmentation and registration of medical imagery |
title_full_unstemmed |
Geometric statistically based methods for the segmentation and registration of medical imagery |
title_sort |
geometric statistically based methods for the segmentation and registration of medical imagery |
publisher |
Georgia Institute of Technology |
publishDate |
2011 |
url |
http://hdl.handle.net/1853/39644 |
work_keys_str_mv |
AT gaoyi geometricstatisticallybasedmethodsforthesegmentationandregistrationofmedicalimagery |
_version_ |
1716475533953335296 |