NUMERICAL EXPERIMENTS FOR THE ESTIMATION OF MEAN DENSITIES OF RANDOM SETS

Many real phenomena may be modelled as random closed sets in <span>ℝ</span><sup>d</sup>, of different Hausdorff dimensions. The problem of the estimation of pointwise mean densities of absolutely continuous, and spatially inhomogeneous, random sets with Hausdorff dimension &l...

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Bibliographic Details
Main Authors: Federico Camerlenghi, Vincenzo Capasso, Elena Villa
Format: Article
Language:English
Published: Slovenian Society for Stereology and Quantitative Image Analysis 2014-05-01
Series:Image Analysis and Stereology
Subjects:
Online Access:http://www.ias-iss.org/ojs/IAS/article/view/1089
Description
Summary:Many real phenomena may be modelled as random closed sets in <span>ℝ</span><sup>d</sup>, of different Hausdorff dimensions. The problem of the estimation of pointwise mean densities of absolutely continuous, and spatially inhomogeneous, random sets with Hausdorff dimension <em>n</em> &lt; <em>d</em>, has been the subject of extended mathematical analysis by the authors. In particular, two different kinds of estimators have been recently proposed, the first one is based on the notion of Minkowski content, the second one is a kernel-type estimator generalizing the well-known kernel density estimator for random variables. The specific aim of the present paper is to validate the theoretical results on statistical properties of those estimators by numerical experiments. We provide a set of simulations which illustrates their valuable properties via typical examples of lower dimensional random sets.
ISSN:1580-3139
1854-5165