Title :
Extending Graph-Cut to Continuous Value Domain Minimization
Author :
Felsberg, Michael
Author_Institution :
Linkoping Univ., Linkoping
Abstract :
In this paper we propose two methods for minimizing objective functions of discrete functions with continuous value domain. Many practical problems in the area of computer vision are continuous-valued, and discrete optimization methods of graph-cut type cannot be applied directly. This is different with the proposed methods. The first method is an add-on for multiple-label graph-cut. In the second one, binary graph-cut is firstly used to generate regions of support within different ranges of the signal. Secondly, a robust error minimization is approximated based on the previously determined regions. The advantages and properties of the new approaches are explained and visualized using synthetic test data. The methods are compared to ordinary multi-label graph-cut and robust smoothing for the application of disparity estimation. They show better quality of results compared to the other approaches and the second algorithm is significantly faster than multi-label graph-cut.
Keywords :
computer vision; graph theory; optimisation; binary graph-cut; computer vision; continuous value domain; continuous value domain minimization; discrete functions; discrete optimization methods; disparity estimation; multiple-label graph-cut; robust error minimization; synthetic test data; Clustering algorithms; Computer vision; Data visualization; Laboratories; Minimization methods; Noise robustness; Optimization methods; Signal generators; Smoothing methods; Testing;
Conference_Titel :
Computer and Robot Vision, 2007. CRV '07. Fourth Canadian Conference on
Conference_Location :
Montreal, Que.
Print_ISBN :
0-7695-2786-8
DOI :
10.1109/CRV.2007.29