Title :
Improved geometric constraints on deformable surface model for volumetric segmentation
Author :
Jiuxiang Hu ; Razdan, Anshuman
Author_Institution :
Partnership for Res. in Spatial Modeling, Tempe, AZ, USA
Abstract :
In this paper, we present a deformable surface geometric model for segmenting targets from volumetric data. This model deforms under external forces only, and changes its geometry and topology by using improved geometric constraints. External forces are calculated by using the sum of inflation forces, whose contributions take place on internal regions of objects, and the gradient forces, which play a key role when the surface is near the boundary of objects. A new set of geometric constraints is proposed which includes constraints on vertices, edges and faces. Once a constraint is broken, the corresponding topological transformation will occur to keep the geometric and topological integrity of the surface unaltered. We demonstrate that our model can efficiently segment complex anatomic structures from medical 3D images, and achieve the requirements of accuracy and geometry for image segmentation.
Keywords :
computational geometry; image segmentation; surface fitting; anatomic structure segmentation; deformable surface model; geometric constraints; geometric integrity; geometric model; gradient force; image segmentation; inflation forces; internal object region; medical 3D images; object boundary; target segmentation; topological integrity; topological transformation; volumetric data; volumetric segmentation; Biomedical imaging; Computer science; Data mining; Deformable models; Geometry; Image edge detection; Image segmentation; Shape; Solid modeling; Topology;
Conference_Titel :
Geometric Modeling and Processing, 2004. Proceedings
Print_ISBN :
0-7695-2078-2
DOI :
10.1109/GMAP.2004.1290045