Normal Estimation for 3D Point Clouds via Local Plane Constraint and Multi-scale Selection
Jun Zhou, Hua Huang, Bin Liu, Xiuping Liu

TL;DR
This paper introduces a robust normal estimation method for unstructured 3D point clouds using local plane constraints and multi-scale selection, improving accuracy and noise resistance.
Contribution
The paper presents a novel multi-scale, data-driven approach with local plane features constraint and scale selection for enhanced normal estimation in noisy point clouds.
Findings
Improved normal estimation accuracy over state-of-the-art methods.
Enhanced robustness to noise and boundary effects.
Effective scale selection guided by a dedicated network.
Abstract
In this paper, we propose a normal estimation method for unstructured 3D point clouds. In this method, a feature constraint mechanism called Local Plane Features Constraint (LPFC) is used and then a multi-scale selection strategy is introduced. The LPEC can be used in a single-scale point network architecture for a more stable normal estimation of the unstructured 3D point clouds. In particular, it can partly overcome the influence of noise on a large sampling scale compared to the other methods which only use regression loss for normal estimation. For more details, a subnetwork is built after point-wise features extracted layers of the network and it gives more constraints to each point of the local patch via a binary classifier in the end. Then we use multi-task optimization to train the normal estimation and local plane classification tasks simultaneously.Also, to integrate the…
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Taxonomy
Topics3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques · Advanced Numerical Analysis Techniques
