Towards Uniform Point Distribution in Feature-preserving Point Cloud
Filtering
- URL: http://arxiv.org/abs/2201.01503v1
- Date: Wed, 5 Jan 2022 09:08:44 GMT
- Title: Towards Uniform Point Distribution in Feature-preserving Point Cloud
Filtering
- Authors: Shuaijun Chen, Jinxi Wang, Wei Pan, Shang Gao, Meili Wang, Xuequan Lu
- Abstract summary: This paper introduces a point cloud filtering method that considers both point distribution and feature preservation during filtering.
Experiments show that our method yields better results with a more uniform point distribution ($5.8times10-5$ Chamfer Distance on average) in seconds.
- Score: 7.863178525014377
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As a popular representation of 3D data, point cloud may contain noise and
need to be filtered before use. Existing point cloud filtering methods either
cannot preserve sharp features or result in uneven point distribution in the
filtered output. To address this problem, this paper introduces a point cloud
filtering method that considers both point distribution and feature
preservation during filtering. The key idea is to incorporate a repulsion term
with a data term in energy minimization. The repulsion term is responsible for
the point distribution, while the data term is to approximate the noisy
surfaces while preserving the geometric features. This method is capable of
handling models with fine-scale features and sharp features. Extensive
experiments show that our method yields better results with a more uniform
point distribution ($5.8\times10^{-5}$ Chamfer Distance on average) in seconds.
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