Demystifying Latschev’s Theorem: Manifold Reconstruction from Noisy Data

Pub Date : 2024-05-13 DOI:10.1007/s00454-024-00655-9
Sushovan Majhi
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Abstract

For a closed Riemannian manifold \(\mathcal {M}\) and a metric space S with a small Gromov–Hausdorff distance to it, Latschev’s theorem guarantees the existence of a sufficiently small scale \(\beta >0\) at which the Vietoris–Rips complex of S is homotopy equivalent to \(\mathcal {M}\). Despite being regarded as a stepping stone to the topological reconstruction of Riemannian manifolds from noisy data, the result is only a qualitative guarantee. Until now, it had been elusive how to quantitatively choose such a proximity scale \(\beta \) in order to provide sampling conditions for S to be homotopy equivalent to \(\mathcal {M}\). In this paper, we prove a stronger and pragmatic version of Latschev’s theorem, facilitating a simple description of \(\beta \) using the sectional curvatures and convexity radius of \(\mathcal {M}\) as the sampling parameters. Our study also delves into the topological recovery of a closed Euclidean submanifold from the Vietoris–Rips complexes of a Hausdorff close Euclidean subset. As already known for Čech complexes, we show that Vietoris–Rips complexes also provide topologically faithful reconstruction guarantees for submanifolds.

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揭开拉切夫定理的神秘面纱:从噪声数据中重构流形
对于一个封闭的黎曼流形(\mathcal {M}\)和一个与之有很小的格罗莫夫-豪斯多夫距离的度量空间S,拉茨切夫定理保证存在一个足够小的尺度(\beta >0\),在这个尺度上,S的Vietoris-Rips复数与\(\mathcal {M}\)同调等价。尽管这一结果被视为从噪声数据中重建黎曼流形拓扑的垫脚石,但它只是一个定性的保证。直到现在,如何定量地选择这样一个接近尺度(\beta \),从而为 S 提供与 \(\mathcal {M}\)同调等价的采样条件,一直是个难题。在本文中,我们证明了 Latschev 定理的一个更强、更实用的版本,便于使用 \(\mathcal {M}\) 的截面曲率和凸半径作为采样参数来简单描述 \(beta \)。我们的研究还深入探讨了从 Hausdorff close 欧几里得子集的 Vietoris-Rips 复数中恢复封闭欧几里得子平面的拓扑。正如对 Čech 复数已经知道的那样,我们证明 Vietoris-Rips 复数也能为子实体提供拓扑忠实重构保证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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