Minimum near-convex shape decomposition.

IEEE Trans. Pattern Anal. Mach. Intell.(2013)

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摘要
Shape decomposition is a fundamental problem for part-based shape representation. We propose the minimum near-convex decomposition (MNCD) to decompose arbitrary shapes into minimum number of "near-convex" parts. The near-convex shape decomposition is formulated as a discrete optimization problem by minimizing the number of nonintersecting cuts. Two perception rules are imposed as constraints into our objective function to improve the visual naturalness of the decomposition. With the degree of near-convexity a user-specified parameter, our decomposition is robust to local distortions and shape deformation. The optimization can be efficiently solved via binary integer linear programming. Both theoretical analysis and experiment results show that our approach outperforms the state-of-the-art results without introducing redundant parts and thus leads to robust shape representation.
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minimum near-convex shape decomposition,near-convex shape decomposition,discrete optimization,nonintersecting cut minimization,fundamental problem,arbitrary shape,shape decomposition,minimum near-convex decomposition,objective function,shape deformation,integer programming,computational geometry,part-based shape representation,linear programming,discrete optimization problem,visual naturalness improvement,minimum number,shape representation,binary integer linear programming,local distortions,minimum near-convex parts,near-convexity degree,perception rules,user-specified parameter,robust shape representation,minimisation,mncd,optimization,shape,integer linear programming,visualization,time complexity,robustness
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