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Non-parametric estimation of the directional distribution of stationary line and fibre processes
Published online by Cambridge University Press: 01 July 2016
Abstract
Two non-parametric methods for the estimation of the directional measure of stationary line and fibre processes in d-dimensional space are presented. The input data for both methods are intersection counts with finitely many test windows situated in hyperplanes. The first estimator is a measure valued maximum likelihood estimator, if applied to Poisson line processes. The second estimator uses an approximation of the associated zonoid (the Steiner compact) by zonotopes. Consistency of both estimators is proved (without use of the Poisson assumption). The estimation methods are compared empirically by simulation.
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- Stochastic Geometry and Statistical Applications
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- Copyright © Applied Probability Trust 2001
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