Title :
Minimal Surfaces Extend Shortest Path Segmentation Methods to 3D
Author_Institution :
Dept. of Imaging & Visualization, Siemens Corp. Res., East Princeton, NJ, USA
Abstract :
Shortest paths have been used to segment object boundaries with both continuous and discrete image models. Although these techniques are well defined in 2D, the character of the path as an object boundary is not preserved in 3D. An object boundary in three dimensions is a 2D surface. However, many different extensions of the shortest path techniques to 3D have been previously proposed in which the 3D object is segmented via a collection of shortest paths rather than a minimal surface, leading to a solution which bears an uncertain relationship to the true minimal surface. Specifically, there is no guarantee that a minimal path between points on two closed contours will lie on the minimal surface joining these contours. We observe that an elegant solution to the computation of a minimal surface on a cellular complex (e.g., a 3D lattice) was given by Sullivan. Sullivan showed that the discrete minimal surface connecting one or more closed contours may be found efficiently by solving a minimum-cost circulation network flow (MCNF) problem. In this work, we detail why a minimal surface properly extends a shortest path (in the context of a boundary) to three dimensions, present Sullivan´s solution to this minimal surface problem via an MCNF calculation, and demonstrate the use of these minimal surfaces on the segmentation of image data.
Keywords :
graph theory; image segmentation; Sullivan solution; cellular complex; continuous-discrete image models; image data segmentation; minimum-cost circulation network flow problem; object boundary segmentation; shortest path segmentation methods; 3D image segmentation; Dijkstra´s algorithm; Graph algorithms; Graph-theoretic methods; Graphs and networks; Inter programming; Linear programming; boundary operator; linear programming; minimal surfaces; minimum-cost circulation network flow.; shortest paths; total unimodularity; Algorithms; Artificial Intelligence; Heart; Humans; Image Processing, Computer-Assisted;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2008.289