DocumentCode
254140
Title
Deformable Registration of Feature-Endowed Point Sets Based on Tensor Fields
Author
Wassermann, Demian ; Ross, James ; Washko, George ; Wells, William M. ; San Jose-Estepar, Raul
Author_Institution
Brigham & Women´s Hosp., Boston, MA, USA
fYear
2014
fDate
23-28 June 2014
Firstpage
2729
Lastpage
2735
Abstract
The main contribution of this work is a framework to register anatomical structures characterized as a point set where each point has an associated symmetric matrix. These matrices can represent problem-dependent characteristics of the registered structure. For example, in airways, matrices can represent the orientation and thickness of the structure. Our framework relies on a dense tensor field representation which we implement sparsely as a kernel mixture of tensor fields. We equip the space of tensor fields with a norm that serves as a similarity measure. To calculate the optimal transformation between two structures we minimize this measure using an analytical gradient for the similarity measure and the deformation field, which we restrict to be a diffeomorphism. We illustrate the value of our tensor field model by comparing our results with scalar and vector field based models. Finally, we evaluate our registration algorithm on synthetic data sets and validate our approach on manually annotated airway trees.
Keywords
image registration; medical image processing; tensors; airway trees; analytical gradient; anatomical structure registration; deformable registration; dense tensor field representation; feature-endowed point sets; kernel mixture; problem-dependent characteristics; registered structure; similarity measure; symmetric matrix; tensor fields; Anatomical structure; Diffusion tensor imaging; Kernel; Symmetric matrices; Tensile stress; Transforms; Vectors; Diffeomorphism; Medical Imaging; Registration; Tensor Field;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location
Columbus, OH
Type
conf
DOI
10.1109/CVPR.2014.355
Filename
6909745
Link To Document