Authors
Yuri Boykov, Olga Veksler
Publication date
2006
Book
Handbook of mathematical models in computer vision
Pages
79-96
Publisher
Springer US
Description
Combinatorial min-cut algorithms on graphs have emerged as an increaseingly useful tool for problems in vision. Typically, the use of graph-cuts is motivated by one of the following two reasons. Firstly, graph-cuts allow geometric interpretation; under certain conditions a cut on a graph can be seen as a hypersurface in N-D space embedding the corresponding graph. Thus, many applications in vision and graphics use min-cut algorithms as a tool for computing optimal hypersurfaces. Secondly, graph-cuts also work as a powerful energy minimization tool for a fairly wide class of binary and nonbinary energies that frequently occur in early vision. In some cases graph cuts produce globally optimal solutions. More generally, there are iterative techniques based on graph-cuts that produce provably good approximations which (were empirically shown to) correspond to high-quality solutions in practice. Thus …
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Y Boykov, O Veksler - Handbook of mathematical models in computer vision, 2006