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Wavelet-based Heat Kernel Derivatives: Towards Informative Localized Shape Analysis

  • Maxime Kirgo
  • , Simone Melzi
  • , Giuseppe Patanè
  • , Emanuele Rodolà
  • , Maks Ovsjanikov
  • Lamsid/EDF/R and D
  • University of Rome
  • IMATI CNR

Résultats de recherche: Contribution à un journalArticleRevue par des pairs

Résumé

In this paper, we propose a new construction for the Mexican hat wavelets on shapes with applications to partial shape matching. Our approach takes its main inspiration from the well-established methodology of diffusion wavelets. This novel construction allows us to rapidly compute a multi-scale family of Mexican hat wavelet functions, by approximating the derivative of the heat kernel. We demonstrate that this leads to a family of functions that inherit many attractive properties of the heat kernel (e.g. local support, ability to recover isometries from a single point, efficient computation). Due to its natural ability to encode high-frequency details on a shape, the proposed method reconstructs and transfers (Formula presented.) -functions more accurately than the Laplace-Beltrami eigenfunction basis and other related bases. Finally, we apply our method to the challenging problems of partial and large-scale shape matching. An extensive comparison to the state-of-the-art shows that it is comparable in performance, while both simpler and much faster than competing approaches.

langue originaleAnglais
Pages (de - à)165-179
Nombre de pages15
journalComputer Graphics Forum
Volume40
Numéro de publication1
Les DOIs
étatPublié - 1 févr. 2021

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