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VISSYM
2003

Adaptive Smooth Scattered Data Approximation for Large-scale Terrain Visualization

13 years 5 months ago
Adaptive Smooth Scattered Data Approximation for Large-scale Terrain Visualization
We present a fast method that adaptively approximates large-scale functional scattered data sets with hierarchical B-splines. The scheme is memory efficient, easy to implement and produces smooth surfaces. It combines adaptive clustering based on quadtrees with piecewise polynomial least squares approximations. The resulting surface components are locally approximated by a smooth B-spline surface obtained by knot removal. Residuals are computed with respect to this surface approximation, determining the clusters that need to be recursively refined, in order to satisfy a prescribed error bound. We provide numerical results for two terrain data sets, demonstrating that our algorithm works efficiently and accurate for large data sets with highly non-uniform sampling densities.
Martin Bertram, Xavier Tricoche, Hans Hagen
Added 01 Nov 2010
Updated 01 Nov 2010
Type Conference
Year 2003
Where VISSYM
Authors Martin Bertram, Xavier Tricoche, Hans Hagen
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