Robust Nonrigid Registration By Convex Optimization

2015 IEEE International Conference on Computer Vision (ICCV)(2015)

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摘要
We present an approach to nonrigid registration of 3D surfaces. We cast isometric embedding as MRF optimization and apply efficient global optimization algorithms based on linear programming relaxations. The Markov random field perspective suggests a natural connection with robust statistics and motivates robust forms of the intrinsic distortion functional. Our approach outperforms a large body of prior work by a significant margin, increasing registration precision on real data by a factor of 3.
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关键词
robust nonrigid registration,convex optimization,3D surfaces,isometric embedding,MRF optimization,global optimization algorithms,linear programming relaxations,Markov random field,intrinsic distortion functional,registration precision
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