Noise-Adaptive Shape Reconstruction from Raw Point Sets
Simon Giraudot, David Cohen-Steiner, Pierre Alliez
In Computer Graphics Forum, 32(5), 2013.
Abstract: We propose a noise-adaptive shape reconstruction method specialized to smooth, closed shapes. Our algorithm takes as input a defect-laden point set with variable noise and outliers, and comprises three main steps. First, we compute a novel noise-adaptive distance function to the inferred shape, which relies on the assumption that the inferred shape is a smooth submanifold of known dimension. Second, we estimate the sign and confidence of the function at a set of seed points, through minimizing a quadratic energy expressed on the edges of a uniform random graph. Third, we compute a signed implicit function through a random walker approach with soft constraints chosen as the most confident seed points computed in previous step.
@article{Giraudot:2013:NSR,
author = {Simon Giraudot and David Cohen-Steiner and Pierre Alliez},
title = {Noise-Adaptive Shape Reconstruction from Raw Point Sets},
journal = {Computer Graphics Forum},
volume = {32},
number = {5},
pages = {229--238},
year = {2013},
}
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