Authors
Thomas Pock, Daniel Cremers, Horst Bischof, Antonin Chambolle
Publication date
2009/9/29
Conference
2009 IEEE 12th International Conference on Computer Vision
Pages
1133-1140
Publisher
IEEE
Description
In this work we revisit the Mumford-Shah functional, one of the most studied variational approaches to image segmentation. The contribution of this paper is to propose an algorithm which allows to minimize a convex relaxation of the Mumford-Shah functional obtained by functional lifting. The algorithm is an efficient primal-dual projection algorithm for which we prove convergence. In contrast to existing algorithms for minimizing the full Mumford-Shah this is the first one which is based on a convex relaxation. As a consequence the computed solutions are independent of the initialization. Experimental results confirm that the proposed algorithm determines smooth approximations while preserving discontinuities of the underlying signal.
Total citations
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Scholar articles
T Pock, D Cremers, H Bischof, A Chambolle - 2009 IEEE 12th International Conference on Computer …, 2009