Fitting a manifold of large reach to noisy data

Let be a -smooth compact submanifold of dimension . Assume that the volume of is at most and the reach (i.e. the normal injectivity radius) of is greater than . Moreover, let be a probability measure on whose density on is a strictly positive Lipschitz-smooth function. Let , be independent random samples from distribution . Also, let , be independent random samples from a Gaussian random variable in having covariance , where is less than a certain specified function of and . We assume that we are given the data points , modelling random points of with measurement noise. We develop an algorithm which produces from these data, with high probability, a dimensional submanifold whose Hausdorff distance to is less than and whose reach is greater than with universal constants . The number of random samples required depends almost linearly on , polynomially on and exponentially on .
View on arXiv