Affiliation:
1. Carnegie Mellon University, University of Toronto, Pittsburgh PA
2. LIX, École Polytechnique, Palaiseau, France
3. Carnegie Mellon University, Pittsburgh PA
Abstract
We introduce a new general-purpose approach to deep learning on three-dimensional surfaces based on the insight that a simple diffusion layer is highly effective for spatial communication. The resulting networks are automatically robust to changes in resolution and sampling of a surface—a basic property that is crucial for practical applications. Our networks can be discretized on various geometric representations, such as triangle meshes or point clouds, and can even be trained on one representation and then applied to another. We optimize the spatial support of diffusion as a continuous network parameter ranging from purely local to totally global, removing the burden of manually choosing neighborhood sizes. The only other ingredients in the method are a multi-layer perceptron applied independently at each point and spatial gradient features to support directional filters. The resulting networks are simple, robust, and efficient. Here, we focus primarily on triangle mesh surfaces and demonstrate state-of-the-art results for a variety of tasks, including surface classification, segmentation, and non-rigid correspondence.
Funder
Fields Institute for Research in Mathematical Sciences, the Vector Institute for AI, an NSF Graduate Research Fellowship, ERC
ANR AI Chair AIGRETTE, a Packard Fellowship, NSF CAREER
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Graphics and Computer-Aided Design
Reference119 articles.
1. Adobe. 2016. Adobe Mixamo 3D Characters. Retrieved from www.mixamo.com.
2. Marc Alexa, Philipp Herholz, Maximilian Kohlbrenner, and Olga Sorkine-Hornung. 2020. Properties of laplace operators for tetrahedral meshes. In Computer Graphics Forum, Vol. 39. Wiley Online Library, 55–68.
3. Dragomir Anguelov, Praveen Srinivasan, Daphne Koller, Sebastian Thrun, Jim Rodgers, and James Davis. 2005. SCAPE: Shape completion and animation of people. In ACM SIGGRAPH 2005 Papers. 408–416.
4. Point convolutional neural networks by extension operators
5. Proceedings of Machine Learning Research Proceedings of the 38th International Conference on Machine Learning 139 Dominique Beani Saro Passaro Vincent Létourneau Will Hamilton Gabriele Corso Pietro Lió Directional graph networks 2021
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