MINA: Convex Mixed-Integer Programming for Non-Rigid Shape Alignment

CVPR(2020)

引用 13|浏览160
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摘要
We present a convex mixed-integer programming formulation for non-rigid shape matching. To this end, we propose a novel shape deformation model based on an efficient low-dimensional discrete model, so that finding a globally optimal solution is tractable in (most) practical cases. Our approach combines several favourable properties: it is independent of the initialisation, it is much more efficient to solve to global optimality compared to analogous quadratic assignment problem formulations, and it is highly flexible in terms of the variants of matching problems it can handle. Experimentally we demonstrate that our approach outperforms existing methods for sparse shape matching, that it can be used for initialising dense shape matching methods, and we showcase its flexibility on several examples.
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关键词
shape deformation model,low-dimensional discrete model,globally optimal solution,favourable properties,global optimality,analogous quadratic assignment problem formulations,matching problems,sparse shape matching,dense shape matching methods,MINA,nonrigid shape alignment,convex mixed-integer programming formulation,nonrigid shape matching
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