Learning Modified Indicator Functions for Surface Reconstruction
- URL: http://arxiv.org/abs/2111.09526v1
- Date: Thu, 18 Nov 2021 05:30:35 GMT
- Title: Learning Modified Indicator Functions for Surface Reconstruction
- Authors: Dong Xiao, Siyou Lin, Zuoqiang Shi, Bin Wang
- Abstract summary: We propose a learning-based approach for implicit surface reconstruction from raw point clouds without normals.
Our method is inspired by Gauss Lemma in potential energy theory, which gives an explicit integral formula for the indicator functions.
We design a novel deep neural network to perform surface integral and learn the modified indicator functions from un-oriented and noisy point clouds.
- Score: 10.413340575612233
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Surface reconstruction is a fundamental problem in 3D graphics. In this
paper, we propose a learning-based approach for implicit surface reconstruction
from raw point clouds without normals. Our method is inspired by Gauss Lemma in
potential energy theory, which gives an explicit integral formula for the
indicator functions. We design a novel deep neural network to perform surface
integral and learn the modified indicator functions from un-oriented and noisy
point clouds. We concatenate features with different scales for accurate
point-wise contributions to the integral. Moreover, we propose a novel Surface
Element Feature Extractor to learn local shape properties. Experiments show
that our method generates smooth surfaces with high normal consistency from
point clouds with different noise scales and achieves state-of-the-art
reconstruction performance compared with current data-driven and
non-data-driven approaches.
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