DocumentCode
3845803
Title
Computing Accurate Correspondences across Groups of Images
Author
Timothy F. Cootes;Carole J. Twining;Vladimir S. Petrovic;Kolawole O. Babalola;Christopher J. Taylor
Author_Institution
University of Manchester, Manchester
Volume
32
Issue
11
fYear
2010
Firstpage
1994
Lastpage
2005
Abstract
Groupwise image registration algorithms seek to establish dense correspondences between sets of images. Typically, they involve iteratively improving the registration between each image and an evolving mean. A variety of methods have been proposed, which differ in their choice of objective function, representation of deformation field, and optimization methods. Given the complexity of the task, the final accuracy is significantly affected by the choices made for each component. Here, we present a groupwise registration algorithm which can take advantage of the statistics of both the image intensities and the range of shapes across the group to achieve accurate matching. By testing on large sets of images (in both 2D and 3D), we explore the effects of using different image representations and different statistical shape constraints. We demonstrate that careful choice of such representations can lead to significant improvements in overall performance.
Keywords
"Shape measurement","Optimization methods","Robustness","Image registration","Iterative algorithms","Statistics","Testing","Image representation","Image analysis","Brain"
Journal_Title
IEEE Transactions on Pattern Analysis and Machine Intelligence
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2009.193
Filename
5342433
Link To Document