Feature Preserving Mesh Generation from 3D Point Clouds
Nader Salman, Mariette Yvinec, Quentin Merigot
Eurographics Symposium on Geometry Processing, 2010, pp. 1623--1632.
Abstract: We address the problem of generating quality surface triangle meshes from 3D point clouds sampled on piecewise smooth surfaces. Using a feature detection process based on the covariance matrices of Voronoi cells, we first extract from the point cloud a set of sharp features. Our algorithm also runs on the input point cloud a reconstruction process, such as Poisson reconstruction, providing an implicit surface. A feature preserving variant of a Delaunay refinement process is then used to generate a mesh approximating the implicit surface and containing a faithful representation of the extracted sharp edges. Such a mesh provides an enhanced trade-off between accuracy and mesh complexity. The whole process is robust to noise and made versatile through a small set of parameters which govern the mesh sizing, approximation error and shape of the elements. We demonstrate the effectiveness of our method on a variety of models including laser scanned datasets ranging from indoor to outdoor scenes.
@inproceedings{Salman:2010:FPM,
author = {Nader Salman and Mariette Yvinec and Quentin Merigot},
title = {Feature Preserving Mesh Generation from 3D Point Clouds},
booktitle = {Eurographics Symposium on Geometry Processing},
pages = {1623--1632},
year = {2010},
}
Return to the search page.
graphbib: Powered by "bibsql" and "SQLite3."