JOURNAL ARTICLE

Geogcn: Geometric Dual-Domain Graph Convolution Network For Point Cloud Denoising

Abstract

We propose GeoGCN, a novel geometric dual-domain graph convolution network for point cloud denoising (PCD). Beyond the traditional wisdom of PCD, to fully exploit the geometric information of point clouds, we define two kinds of surface normals, one is called Real Normal (RN), and the other is Virtual Normal (VN). RN preserves the local details of noisy point clouds while VN avoids the global shape shrinkage during denoising. GeoGCN is a new PCD paradigm that, 1) first regresses point positions by spatial-based GCN with the help of VNs, 2) then estimates initial RNs by performing Principal Component Analysis on the regressed points, and 3) finally regresses fine RNs by normal-based GCN. Unlike existing PCD methods, GeoGCN not only exploits two kinds of geometry expertise (i.e., RN and VN) but also benefits from training data. Experiments validate that GeoGCN outperforms SOTAs in terms of both noise-robustness and local-and-global feature preservation.

Keywords:
Point cloud Robustness (evolution) Exploit Computer science Noise reduction Convolution (computer science) Graph Artificial intelligence Cloud computing Pattern recognition (psychology) Algorithm Computer vision Theoretical computer science Artificial neural network

Metrics

7
Cited By
2.35
FWCI (Field Weighted Citation Impact)
24
Refs
0.80
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

3D Shape Modeling and Analysis
Physical Sciences →  Engineering →  Computational Mechanics
Advanced Numerical Analysis Techniques
Physical Sciences →  Engineering →  Computational Mechanics
Computer Graphics and Visualization Techniques
Physical Sciences →  Computer Science →  Computer Graphics and Computer-Aided Design
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