2019
DOI: 10.1145/3355089.3356524
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Abstract: We present a simple and efficient method for refining maps or correspondences by iterative upsampling in the spectral domain that can be implemented in a few lines of code. Our main observation is that high quality maps can be obtained even if the input correspondences are noisy or are encoded by a small number of coefficients in a spectral basis. We show how this approach can be used in conjunction with existing initialization techniques across a range of application scenarios, including symmetry detection, m… Show more

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Cited by 99 publications
(41 citation statements)
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“…Our experiments show that CCuantuMM significantly outperforms several variants of the previous quantumhybrid method Q-Match [42]. It is even competitive with several non-learning-based classical state-of-the-art shape methods [22,36] and can match more shapes than them. In a broader sense, this paper demonstrates the very high potential of applying (currently available and future) quantum hardware in computer vision.…”
Section: Introductionmentioning
confidence: 79%
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“…Our experiments show that CCuantuMM significantly outperforms several variants of the previous quantumhybrid method Q-Match [42]. It is even competitive with several non-learning-based classical state-of-the-art shape methods [22,36] and can match more shapes than them. In a broader sense, this paper demonstrates the very high potential of applying (currently available and future) quantum hardware in computer vision.…”
Section: Introductionmentioning
confidence: 79%
“…Matching shape pairs is a classical problem in geometry processing [36]. When more than two shapes of the same class exist, stronger geometric cues can be leveraged to improve results by matching all of them simultaneously.…”
Section: Related Workmentioning
confidence: 99%
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“…For each shape of the SHREC'19 dataset [ MMR*19b ], we compute the matrix with entries , where designates the i ‐th basis vector. We use 7 landmarks, 10 Dirichlet‐Steklov eigenfunctions, leading to a Dirichlet‐Steklov block of size 70 × 70, and 120 Dirichlet Laplacian eigenfunctions.…”
Section: Discretization Of the Dirichlet Laplacian Eigenproblemmentioning
confidence: 99%
“…Therefore, many studies try to formulate powerful constraints such as preservation of geometric quantities (e.g., descriptors) combined with commutativity to optimize the structural properties of the functional maps [OBCS*12]. Later, follow‐up research have been extended to partial shapes [RCB*17, LRB*16], refined pointwise maps [RMC17], direction‐preserving maps [RPWO18], and iteratively spectral upsampling maps [MRR*19], as well as maps combined with the matrix scaling schemes from computational optimal transport [PRM*21] and with extrinsic shape alignment [ELC20]. Despite great successes achieved by these axiomatic methods, their performances still heavily depend on the quality of the inputting handcrafted descriptor and most of them make restrictive assumptions about the discretization, topology, or deformation of the considered shapes.…”
Section: Related Workmentioning
confidence: 99%