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Neural Laplacian Operator for 3D Point Clouds

点云 拉普拉斯算子 操作员(生物学) 计算机科学 人工智能 点(几何) 计算机视觉 数学 几何学 数学分析 生物化学 转录因子 基因 抑制因子 化学
作者
Bo Pang,Zhongtian Zheng,Yilong Li,Guoping Wang,Peng‐Shuai Wang
出处
期刊:ACM Transactions on Graphics [Association for Computing Machinery]
卷期号:43 (6): 1-14 被引量:1
标识
DOI:10.1145/3687901
摘要

The discrete Laplacian operator holds a crucial role in 3D geometry processing, yet it is still challenging to define it on point clouds. Previous works mainly focused on constructing a local triangulation around each point to approximate the underlying manifold for defining the Laplacian operator, which may not be robust or accurate. In contrast, we simply use the K- nearest neighbors (KNN) graph constructed from the input point cloud and learn the Laplacian operator on the KNN graph with graph neural networks (GNNs). However, the ground-truth Laplacian operator is defined on a manifold mesh with a different connectivity from the KNN graph and thus cannot be directly used for training. To train the GNN, we propose a novel training scheme by imitating the behavior of the ground-truth Laplacian operator on a set of probe functions so that the learned Laplacian operator behaves similarly to the ground-truth Laplacian operator. We train our network on a subset of ShapeNet and evaluate it across a variety of point clouds. Compared with previous methods, our method reduces the error by an order of magnitude and excels in handling sparse point clouds with thin structures or sharp features. Our method also demonstrates a strong generalization ability to unseen shapes. With our learned Laplacian operator, we further apply a series of Laplacian-based geometry processing algorithms directly to point clouds and achieve accurate results, enabling many exciting possibilities for geometry processing on point clouds. The code and trained models are available at https://github.com/IntelligentGeometry/NeLo.

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