NANAApr 20, 2018

Shape Partitioning via L$_p$ Compressed Modes

arXiv:1804.076204 citationsh-index: 26
AI Analysis

For researchers in shape geometry processing, this work provides a new method for obtaining localized basis functions that improves upon L1-based approaches, though the improvements are incremental.

This paper introduces an Lp (0<p<1) penalized variational formulation to obtain compactly supported basis functions for spectral shape analysis, and demonstrates its effectiveness on 2-manifold decomposition (mesh segmentation and patch-based partitioning) tasks.

The eigenfunctions of the Laplace Beltrami operator (Manifold Harmonics) define a function basis that can be used in spectral analysis on manifolds. In [21] the authors recast the problem as an orthogonality constrained optimization problem and pioneer the use of an $L_1$ penalty term to obtain sparse (localized) solutions. In this context, the notion corresponding to sparsity is compact support which entails spatially localized solutions. We propose to enforce such a compact support structure by a variational optimization formulation with an $L_p$ penalization term, with $0<p<1$. The challenging solution of the orthogonality constrained non-convex minimization problem is obtained by applying splitting strategies and an ADMM-based iterative algorithm. The effectiveness of the novel compact support basis is demonstrated in the solution of the 2-manifold decomposition problem which plays an important role in shape geometry processing where the boundary of a 3D object is well represented by a polygonal mesh. We propose an algorithm for mesh segmentation and patch-based partitioning (where a genus-0 surface patching is required). Experiments on shape partitioning are conducted to validate the performance of the proposed compact support basis.

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