Continuous Global Optimization in Surface Reconstruction from an Oriented Point Cloud
Date issued
2011
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
We introduce a continuous global optimization method to the field of surface reconstruction from discrete
noisy cloud of points with weak information on orientation. The proposed method uses an energy functional
combining flux-based data-fit measures and a regularization term. A continuous convex relaxation scheme
assures the global minima of the geometric surface functional. The reconstructed surface is implicitly
represented by the binary segmentation of vertices of a 3D uniform grid and a triangulated surface can be
obtained by extracting an appropriate isosurface. Unlike the discrete graph-cut solution, the continuous
global optimization entails advantages like memory requirements, reduction of metrication errors for
geometric quantities, allowing globally optimal surface reconstruction at higher grid resolutions. We
demonstrate the performance of the proposed method on several oriented point clouds captured by laser
scanners. Experimental results confirm that our approach is robust to noise, large holes and non-uniform
sampling density under the condition of very coarse orientation information.
Description
Subject(s)
počítačová grafika, rekonstrukce povrchu, interpolace
Citation
Computer Aided Design. 2011, vol. 43, no. 8, p. 896-901.