Iterative graph cuts for image segmentation with a nonlinear statistical shape prior
Computer Vision and Pattern Recognition
2014-05-05 v2 Optimization and Control
Data Analysis, Statistics and Probability
Quantitative Methods
Applications
Abstract
Shape-based regularization has proven to be a useful method for delineating objects within noisy images where one has prior knowledge of the shape of the targeted object. When a collection of possible shapes is available, the specification of a shape prior using kernel density estimation is a natural technique. Unfortunately, energy functionals arising from kernel density estimation are of a form that makes them impossible to directly minimize using efficient optimization algorithms such as graph cuts. Our main contribution is to show how one may recast the energy functional into a form that is minimizable iteratively and efficiently using graph cuts.
Cite
@article{arxiv.1208.4384,
title = {Iterative graph cuts for image segmentation with a nonlinear statistical shape prior},
author = {Joshua C. Chang and Tom Chou},
journal= {arXiv preprint arXiv:1208.4384},
year = {2014}
}
Comments
Revision submitted to JMIV (02/24/13)