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2011

Sparse Template-Based variational Image Segmentation

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Sparse Template-Based variational Image Segmentation
We introduce a variational approach to image segmentation based on sparse coverings of image domains by shape templates. The objective function combines a data term that achieves robustness by tolerating overlapping templates with a regularizer enforcing sparsity. A suitable convex relaxation leads to the variational approach that is amenable to large-scale convex programming. Our approach takes implicitly into account prior knowledge about the shape of objects and their parts, without resorting to combinatorially difficult problems of variational inference. We illustrate our approach by numerical examples and indicate how prior knowledge acquisition may be achieved by learning from examples.
Dirk Breitenreicher, Jan Lellmann, Christoph Schn&
Added 12 Dec 2011
Updated 12 Dec 2011
Type Journal
Year 2011
Where AADA
Authors Dirk Breitenreicher, Jan Lellmann, Christoph Schnörr
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