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Constructing Laplace operator from point clouds in Rd

机译:从Rd中的点云构造Laplace运算符

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We present an algorithm for approximating the Laplace-Beltrami operator from an arbitrary point cloud obtained from a k-dimensional manifold embedded in the d-dimensional space. We show that this PCD Laplace (Point-Cloud Data Laplace) operator converges to the Laplace-Beltrami operator on the underlying manifold as the point cloud becomes denser. Unlike the previous work, we do not assume that the data samples are independent identically distributed from a probability distribution and do not require a global mesh. The resulting algorithm is easy to implement. We present experimental results indicating that even for point sets sampled from a uniform distribution, PCD Laplace converges faster than the weighted graph Laplacian. We also show that using our PCD Laplacian we can directly estimate certain geometric invariants, such as manifold area.
机译:我们提出一种算法,用于从嵌入d维空间的k维流形获得的任意点云中近似Laplace-Beltrami算子。我们显示,随着点云变得更密集,此PCD Laplace(点云数据Laplace)运算符收敛到基础流形上的Laplace-Beltrami运算符。与以前的工作不同,我们不假定数据样本是独立于概率分布的独立均匀分布的,并且不需要全局网格。生成的算法易于实现。我们提供的实验结果表明,即使对于从均匀分布采样的点集,PCD Laplace的收敛速度也比加权图Laplacian快。我们还表明,使用PCD拉普拉斯算子,我们可以直接估计某些几何不变量,例如流形面积。

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