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  1. Home
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  4. CCuantuMM: Cycle-Consistent Quantum-Hybrid Matching of Multiple Shapes
 
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CCuantuMM: Cycle-Consistent Quantum-Hybrid Matching of Multiple Shapes

ISSN
10636919
Date Issued
2023-01-01
Author(s)
Bhatia, Harshil
Tretschk, Edith
Lähner, Zorah
Benkner, Marcel Seelbach
Moeller, Michael
Theobalt, Christian
Golyanik, Vladislav
DOI
10.1109/CVPR52729.2023.00131
Abstract
Jointly matching multiple, non-rigidly deformed 3D shapes is a challenging, NP-hard problem. A perfect matching is necessarily cycle-consistent: Following the pairwise point correspondences along several shapes must end up at the starting vertex of the original shape. Unfortunately, existing quantum shape-matching methods do not support multiple shapes and even less cycle consistency. This paper addresses the open challenges and introduces the first quantum-hybrid approach for 3D shape multi-matching; in addition, it is also cycle-consistent. Its iterative formulation is admissible to modern adiabatic quantum hardware and scales linearly with the total number of input shapes. Both these characteristics are achieved by reducing the N-shape case to a sequence of three-shape matchings, the derivation of which is our main technical contribution. Thanks to quantum annealing, high-quality solutions with low energy are retrieved for the intermediate NP- hard objectives. On benchmark datasets, the proposed approach significantly outperforms extensions to multi-shape matching of a previous quantum-hybrid two-shape matching method and is on-par with classical multi-matching methods. Our source code is available at 4dqv.mpiinf.mpg.de/CCuantuMM/.
Subjects
  • grouping and shape an...

  • Segmentation

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