Recovering the shape of a point cloud in the plane
Abstract
In this work we deal with the problem of support estimation under shape restrictions. The shape restriction we deal with is an extension of the notion of convexity named alpha-convexity. Instead of assuming, as in the convex case, the existence of a separating hyperplane for each exterior point we assume the existence of a separating open ball with radius alpha. Given an alpha-convex set S, the alpha-convex hull of independent random points in S is the natural estimator of the set. If alpha is unknown the rn-convex hull of the sample can be considered. We analyze the asymptotic properties of the rn-convex hull estimator in the bidimensional case and obtain the convergence rate for the expected distance in measure between the set and the estimator. The geometrical complexity of the estimator and its dependence on rn is also obtained via the analysis of the expected number of vertices of the rn-convex hull.
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