Volume 46, pp. 36-54, 2017.
Sparsity-inducing variational shape partitioning
Serena Morigi and Martin Huska
Abstract
We propose a sparsity-inducing multi-channel multiple region model for the efficient partitioning of a mesh into salient parts. Our approach is based on rewriting the Mumford-Shah models in terms of piece-wise smooth/constant functionals that incorporate a non-convex regularizer for minimizing the boundary lengths. The solution of this optimization problem, obtained by an efficient proximal forward backward algorithm, is used by a simple thresholding/clusterization procedure to segment the shape into the required number of parts. Therefore, it is not necessary to further solve the optimization problem for a different number of partitioning regions. Experimental results show the effectiveness and efficiency of our proposals when applied to both single- and multi-channel (shape characterizing) functions.
Full Text (PDF) [9.3 MB], BibTeX
Key words
mesh decomposition, variational segmentation, non-convex minimization, spectral clustering
AMS subject classifications
65M10, 78A48.
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