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Orthogonal Least Squares in Partition of Unity Surface Reconstruction with Radial Basis Function
London, England July 05-July 06
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/GMAI.2006.40Geometric Modeling and Imaging--New T ...
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Qi Xia, The Chinese University of Hong Kong, China
Michael Yu Wang, The Chinese University of Hong Kong, China
Xiaojun Wu, Shenzhen Graduate School of HIT, China
In this paper, a least squares formulation with radial basis function for surface reconstruction is presented and OLS (Orthogonal Least Squares) algorithm is proposed to select centers and eliminate numerical ill-conditioning. The two objectives are fused into a single iterative process in OLS algorithm, which makes the reconstruction fast and robust. In the end, in order to deal with large point sets, we organize a point set with an octree; reconstruct surfaces in octree cells and blend them into a global surface by Partition of Unity (POU) method. To sum up, the first method is dedicated to reconstructing a surface with a smaller number of RBFs, and the last one is a local method to bypass impractical global reconstructions. Effectiveness of our proposed methods is demonstrated with results of real world point sets.
Citation:
Qi Xia, Michael Yu Wang, Xiaojun Wu, "Orthogonal Least Squares in Partition of Unity Surface Reconstruction with Radial Basis Function," gmai, pp.28-33, Geometric Modeling and Imaging--New Trends (GMAI'06), 2006
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