Geometric Attention for Prediction of Differential Properties in 3D
Point Clouds
- URL: http://arxiv.org/abs/2007.02571v3
- Date: Thu, 6 Aug 2020 09:10:21 GMT
- Title: Geometric Attention for Prediction of Differential Properties in 3D
Point Clouds
- Authors: Albert Matveev, Alexey Artemov, Denis Zorin and Evgeny Burnaev
- Abstract summary: In this study, we present a geometric attention mechanism that can provide such properties in a learnable fashion.
We establish the usefulness of the proposed technique with several experiments on the prediction of normal vectors and the extraction of feature lines.
- Score: 32.68259334785767
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Estimation of differential geometric quantities in discrete 3D data
representations is one of the crucial steps in the geometry processing
pipeline. Specifically, estimating normals and sharp feature lines from raw
point cloud helps improve meshing quality and allows us to use more precise
surface reconstruction techniques. When designing a learnable approach to such
problems, the main difficulty is selecting neighborhoods in a point cloud and
incorporating geometric relations between the points. In this study, we present
a geometric attention mechanism that can provide such properties in a learnable
fashion. We establish the usefulness of the proposed technique with several
experiments on the prediction of normal vectors and the extraction of feature
lines.
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