Title | Branch-and-mincut: Global optimization for image segmentation with high-level priors |
Publication Type | Journal Article |
Year of Publication | 2012 |
Authors | Lempitsky, V, Blake, A, Rother, C |
Journal | Journal of Mathematical Imaging and Vision |
Volume | 44 |
Pagination | 315–329 |
ISSN | 09249907 |
Keywords | Branch-and-bound, Global optimization, Graph Cuts, Image segmentation, Shape priors |
Abstract | Efficient global optimization techniques such as graph cut exist for energies corresponding to binary image segmentation from low-level cues. However, introducing a high-level prior such as a shape prior or a color-distribution prior into the segmentation process typically results in an energy that is much harder to optimize. The main contribution of the paper is a new global optimization framework for a wide class of such energies. The framework is built upon two powerful techniques: graph cut and branch-and-bound. These techniques are unified through the derivation of lower bounds on the energies. Being computable via graph cut, these bounds are used to prune branches within a branchand-bound search. We demonstrate that the new framework can compute globally optimal segmentations for a variety of segmentation scenarios in a reasonable time on a modern CPU. These scenarios include unsupervised segmentation of an object undergoing 3D pose change, category-specific shape segmentation, and the segmentation under intensity/color priors defined by Chan-Vese and GrabCut functionals. © Springer Science+Business Media, LLC 2011. |
DOI | 10.1007/s10851-012-0328-0 |
Citation Key | Lempitsky2012 |