Nonparametric estimation of surface integrals
Ra\'ul Jim\'enez, J. E. Yukich

TL;DR
This paper introduces a new nonparametric method for estimating surface integrals on unknown bodies using Delaunay triangulations, avoiding smoothing parameters and providing consistent estimators with applications in physics and image analysis.
Contribution
The authors develop a novel approach based on Delaunay triangulations that bypasses smoothing parameters, enabling consistent estimation of boundary measures and surface integrals.
Findings
The method provides strongly consistent estimators.
Simulation results demonstrate accuracy and robustness.
Application to real-world data shows practical utility.
Abstract
The estimation of surface integrals on the boundary of an unknown body is a challenge for nonparametric methods in statistics, with powerful applications to physics and image analysis, among other fields. Provided that one can determine whether random shots hit the body, Cuevas et al. [Ann. Statist. 35 (2007) 1031--1051] estimate the boundary measure (the boundary length for planar sets and the surface area for 3-dimensional objects) via the consideration of shots at a box containing the body. The statistics considered by these authors, as well as those in subsequent papers, are based on the estimation of Minkowski content and depend on a smoothing parameter which must be carefully chosen. For the same sampling scheme, we introduce a new approach which bypasses this issue, providing strongly consistent estimators of both the boundary measure and the surface integrals of scalar…
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