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http://hdl.handle.net/11375/13446
Title: | Elastic Registration of Medical Images Using Generic Dynamic Deformation Models |
Authors: | Marami, Bahram |
Advisor: | Sirouspour, Shahin Capson, David Noseworthy, Michael D. |
Department: | Electrical and Computer Engineering |
Keywords: | image registration;finite element modeling;deformable registration;state estimation;magnetic resonance imaging;ultrasound imaging;dynamic deformation tracking;Biomedical;Biomedical |
Publication Date: | Oct-2013 |
Abstract: | <p>This thesis presents a family of automatic elastic registration methods applicable to single and multimodal images of similar or dissimilar dimensions. These registration algorithms employ a generic dynamic linear elastic continuum mechanics model of the tissue deformation which is discretized using the finite element method. The dynamic deformation model provides spatial and temporal correlation between images acquired from different orientations at different times. First, a volumetric registration algorithm is presented which estimates the deformation field by balancing internal deformation forces of the elastic model against external forces derived from an intensity-based similarity measure between images. The registration is achieved by iteratively solving a reduced form of the dynamic deformation equations in response to image-derived nodal forces. A general approach for automatic deformable image registration is also presented in this thesis which deals with different registration problems within a unified framework irrespective of the image modality and dimension. Using the dynamic deformation model, the problem of deformable image registration is approached as a classical state estimation problem with various image similarity measures providing an observation model. With this formulation, single and multiple-modality, 3D-3D and 3D-2D image registration problems can all be treated within the same framework.The registration is achieved through a Kalman-like filtering process which incorporates information from the deformation model and an observation error computed from an intensity-based similarity measure. Correlation ratio, normalized correlation coefficient, mutual information, modality independent neighborhood descriptor and sum of squared differences between images are similarity/distance measures employed for single and multiple modality image registration in this thesis</p> |
URI: | http://hdl.handle.net/11375/13446 |
Identifier: | opendissertations/8267 9351 4614918 |
Appears in Collections: | Open Access Dissertations and Theses |
Files in This Item:
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fulltext.pdf | 7.15 MB | Adobe PDF | View/Open |
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