DocumentCode
2074945
Title
Statistically-Constrained High-Dimensional Warping Using Wavelet-Based Priors
Author
Xue, Zhong ; Shen, Dinggang ; Davatzikos, Christos
Author_Institution
University of Pennsylvania, USA
fYear
2006
fDate
17-22 June 2006
Firstpage
71
Lastpage
71
Abstract
In this paper, a Statistical Model of Deformation (SMD) that captures the statistical prior distribution of highdimensional deformations more accurately and effectively than conventional PCA-based statistical shape models is used to regularize deformable registration. SMD utilizes a wavelet-based representation of statistical variation of a deformation field and its Jacobian, and it is able to capture both global and fine shape detail without overconstraining the deformation process. This approach is shown to produce more accurate and robust registration results in MR brain images, relative to the registration methods that use Laplacian-based smoothness constraints of deformation fields. In experiments, we evaluate the SMD-constrained registration by comparing the performance of registration with and without SMD in a specific deformable registration framework. The proposed method can potentially incorporate various registration algorithms to improve their robustness and stability using statistically-based regularization.
Keywords
Biomedical imaging; Deformable models; Elasticity; Principal component analysis; Robust stability; Robustness; Shape; Statistics; Wavelet analysis; Wavelet packets;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition Workshop, 2006. CVPRW '06. Conference on
Print_ISBN
0-7695-2646-2
Type
conf
DOI
10.1109/CVPRW.2006.1
Filename
1640512
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