A robust framework for medical image segmentation through adaptable class-specific representation
PhD thesis
Nielsen, C. 2002. A robust framework for medical image segmentation through adaptable class-specific representation. PhD thesis Middlesex University School of Computing Science
Type | PhD thesis |
---|---|
Title | A robust framework for medical image segmentation through adaptable class-specific representation |
Authors | Nielsen, C. |
Abstract | Medical image segmentation is an increasingly important component in virtual pathology, diagnostic imaging and computer-assisted surgery. Better hardware for image acquisition and a variety of advanced visualisation methods have paved the way for the development of computer based tools for medical image analysis and interpretation. The routine use of medical imaging scans of multiple modalities has been growing over the last decades and data sets such as the Visible Human Project have introduced a new modality in the form of colour cryo section data. These developments have given rise to an increasing need for better automatic and semiautomatic segmentation methods. The work presented in this thesis concerns the development of a new framework for robust semi-automatic segmentation of medical imaging data of multiple modalities. Following the specification of a set of conceptual and technical requirements, the framework known as ACSR (Adaptable Class-Specific Representation) is developed in the first case for 2D colour cryo section |
Department name | School of Computing Science |
Institution name | Middlesex University |
Publication dates | |
29 Jan 2015 | |
Publication process dates | |
Deposited | 29 Jan 2015 |
Completed | Aug 2002 |
Output status | Published |
Accepted author manuscript | |
Language | English |
https://repository.mdx.ac.uk/item/84w47
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