Title :
Surface parameterization using Riemann surface structure
Author :
Wang, Yalin ; Gu, Xianfeng ; Hayashi, Kiralee M. ; Chan, Tony F. ; Thompson, Paul M. ; Yau, Shing-Tung
Author_Institution :
Dept. of Math., UCLA, Los Angeles, CA
Abstract :
We propose a general method that parameterizes general surfaces with complex (possible branching) topology using Riemann surface structure. Rather than evolve the surface geometry to a plane or sphere, we instead use the fact that all orientable surfaces are Riemann surfaces and admit conformal structures, which induce special curvilinear coordinate systems on the surfaces. We can then automatically partition the surface using a critical graph that connects zero points in the global conformal structure on the surface. The trajectories of iso-parametric curves canonically partition a surface into patches. Each of these patches is either a topological disk or a cylinder and can be conformally mapped to a parallelogram by integrating a holomorphic I-form defined on the surface. The resulting surface subdivision and the parameterizations of the components are intrinsic and stable. For surfaces with similar topology and geometry, we show that the parameterization results are consistent and the subdivided surfaces can be matched to each other using constrained harmonic maps. The surface similarity can be measured by direct computation of distance between each pair of corresponding points on two surfaces. To illustrate the technique, we computed conformal structures for anatomical surfaces in MRI scans of the brain and human face surfaces. We found that the resulting parameterizations were consistent across subjects, even for branching structures such as the ventricles, which are otherwise difficult to parameterize. Our method provides a surface-based framework for statistical comparison of surfaces and for generating grids on surfaces for PDE-based signal processing
Keywords :
computational geometry; image segmentation; surface fitting; Riemann surface structure; brain surface; conformal structures; constrained harmonic maps; critical graph; curvilinear coordinate systems; human face surface; iso-parametric curves; surface geometry; surface parameterization; surface partition; surface similarity; surface topology; Biomedical imaging; Brain; Conformal mapping; Geometry; Grid computing; Mathematics; Neuroimaging; Shape; Surface structures; Topology;
Conference_Titel :
Computer Vision, 2005. ICCV 2005. Tenth IEEE International Conference on
Conference_Location :
Beijing
Print_ISBN :
0-7695-2334-X
DOI :
10.1109/ICCV.2005.233