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Fitting a manifold of large reach to noisy data

11 October 2019
Charles Fefferman
Sergei Ivanov
Matti Lassas
Hariharan Narayanan
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Abstract

Let M⊂Rn{\mathcal M}\subset {\mathbb R}^nM⊂Rn be a C2C^2C2-smooth compact submanifold of dimension ddd. Assume that the volume of M{\mathcal M}M is at most VVV and the reach (i.e.\ the normal injectivity radius) of M{\mathcal M}M is greater than τ\tauτ. Moreover, let μ\muμ be a probability measure on M{\mathcal M}M which density on M{\mathcal M}M is a strictly positive Lipschitz-smooth function. Let xj∈Mx_j\in {\mathcal M}xj​∈M, j=1,2,…,Nj=1,2,\dots,Nj=1,2,…,N be NNN independent random samples from distribution μ\muμ. Also, let ξj\xi_jξj​, j=1,2,…,Nj=1,2,\dots, Nj=1,2,…,N be independent random samples from a Gaussian random variable in Rn{\mathbb R}^nRn having covariance σ2I\sigma^2Iσ2I, where σ\sigmaσ is less than a certain specified function of d,Vd, Vd,V and τ\tauτ. We assume that we are given the data points yj=xj+ξj,y_j=x_j+\xi_j,yj​=xj​+ξj​, j=1,2,…,Nj=1,2,\dots,Nj=1,2,…,N, modelling random points of M{\mathcal M}M with measurement noise. We develop an algorithm which produces from these data, with high probability, a ddd dimensional submanifold Mo⊂Rn{\mathcal M}_o\subset {\mathbb R}^nMo​⊂Rn whose Hausdorff distance to M{\mathcal M}M is less than Cdσ2/τCd\sigma^2/\tauCdσ2/τ and whose reach is greater than cτ/d6c{\tau}/d^6cτ/d6 with universal constants C,c>0C,c > 0C,c>0. The number NNN of random samples required depends almost linearly on nnn, polynomially on σ−1\sigma^{-1}σ−1 and exponentially on ddd.

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