We introduce a novel data-driven approach aimed at designing high-quality shape deformations based on a coarse localized input signal. Unlike previous data-driven methods that require a global shape encoding, we observe that detail-preserving deformations can be estimated reliably without any global context in certain scenarios. Building on this intuition, we leverage Jacobians defined in a one-ring neighborhood as a coarse representation of the deformation. Using this as the input to our neural network, we apply a series of MLPs combined with feature smoothing to learn the Jacobian corresponding to the detail-preserving deformation, from which the embedding is recovered by the standard Poisson solve. Crucially, by removing the dependence on a global encoding, every point becomes a training example, making the supervision particularly lightweight. Moreover, when trained on a class of shapes, our approach demonstrates remarkable generalization across different object categories. Equipped with this novel network, we explore three main tasks: refining an approximate shape correspondence, unsupervised deformation and mapping, and shape editing. Our code is made available at https://github.com/sentient07/LJN.

Sundararaman, R., Donati, N., Melzi, S., Corman, E., Ovsjanikov, M. (2024). Deformation Recovery: Localized Learning for Detail-Preserving Deformations. ACM TRANSACTIONS ON GRAPHICS, 43(6), 1-16 [10.1145/3687968].

Deformation Recovery: Localized Learning for Detail-Preserving Deformations

Melzi S.;
2024

Abstract

We introduce a novel data-driven approach aimed at designing high-quality shape deformations based on a coarse localized input signal. Unlike previous data-driven methods that require a global shape encoding, we observe that detail-preserving deformations can be estimated reliably without any global context in certain scenarios. Building on this intuition, we leverage Jacobians defined in a one-ring neighborhood as a coarse representation of the deformation. Using this as the input to our neural network, we apply a series of MLPs combined with feature smoothing to learn the Jacobian corresponding to the detail-preserving deformation, from which the embedding is recovered by the standard Poisson solve. Crucially, by removing the dependence on a global encoding, every point becomes a training example, making the supervision particularly lightweight. Moreover, when trained on a class of shapes, our approach demonstrates remarkable generalization across different object categories. Equipped with this novel network, we explore three main tasks: refining an approximate shape correspondence, unsupervised deformation and mapping, and shape editing. Our code is made available at https://github.com/sentient07/LJN.
Articolo in rivista - Articolo scientifico
shape correspondence; shape deformation; spectral geometry processing;
English
19-nov-2024
2024
43
6
1
16
12-ART219
reserved
Sundararaman, R., Donati, N., Melzi, S., Corman, E., Ovsjanikov, M. (2024). Deformation Recovery: Localized Learning for Detail-Preserving Deformations. ACM TRANSACTIONS ON GRAPHICS, 43(6), 1-16 [10.1145/3687968].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/558681
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