Parameter-Free And Multigrid Convergent Digital Curvature Estimators

DISCRETE GEOMETRY FOR COMPUTER IMAGERY, DGCI 2014(2014)

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摘要
In many geometry processing applications, the estimation of differential geometric quantities such as curvature or normal vector field is an essential step. Focusing on multigrid convergent estimators, most of them require a user specified parameter to define the scale at which the analysis is performed (size of a convolution kernel, size of local patches for polynomial fitting, etc). In a previous work, we have proposed a new class of estimators on digital shape boundaries based on Integral Invariants. In this paper, we propose new variants of these estimators which are parameter-free and ensure multigrid convergence in 2D. As far as we know, these are the first parameter-free multigrid convergent curvature estimators.
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关键词
Curvature estimation, multigrid convergence, integral invariants, digital straight segments, parameter-free estimators
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