Approximating boundaries using data recorded on a regular grid
induces discrete rounding errors in both vertical and horizontal directions. In
cases where grid points exhibit at least some degree of randomness, an
extensive theory has been developed for local-polynomial boundary estimators.
It is inapplicable to regular grids, however. In this paper we impose strict
regularity of the grid and describe the performance of local linear estimators
in this context. Unlike the case of classical curve estimation problems,
pointwise convergence rates vary erratically along the boundary, depending on
number-theoretic properties of the boundary’s slope. However,
average convergence rates, expressed in the $L_1$ metric, are much less
susceptible to fluctuation. We derive theoretical bounds to performance, coming
within no more than a logarithmic factor of the optimal convergence rate.
Publié le : 1998-12-14
Classification:
Digital image,
image analysis,
lattice,
local linear smoothing,
local polynomial smoothing,
$L_1$ metric,
metric number theory,
numerical analysis,
pixel grid,
62G20
@article{1024691467,
author = {Hall, Peter and Raimondo, Marc},
title = {On global performance of approximations to smooth curves using
gridded data},
journal = {Ann. Statist.},
volume = {26},
number = {3},
year = {1998},
pages = { 2206-2217},
language = {en},
url = {http://dml.mathdoc.fr/item/1024691467}
}
Hall, Peter; Raimondo, Marc. On global performance of approximations to smooth curves using
gridded data. Ann. Statist., Tome 26 (1998) no. 3, pp. 2206-2217. http://gdmltest.u-ga.fr/item/1024691467/