Robust Geometry Estimation using the Generalized Voronoi Covariance Measure

Siam Journal on Imaging Sciences(2015)

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摘要
The Voronoi Covariance Measure of a compact set K of R^d is a tensor-valued measure that encodes geometric information on K and which is known to be resilient to Hausdorff noise but sensitive to outliers. In this article, we generalize this notion to any distance-like function delta and define the delta-VCM. We show that the delta-VCM is resilient to Hausdorff noise and to outliers, thus providing a tool to estimate robustly normals from a point cloud approximation. We present experiments showing the robustness of our approach for normal and curvature estimation and sharp feature detection.
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关键词
geometric inference,normal estimation,curvature estimation,distance to a measure,Voronoi covariance measure,power diagram
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