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2003
Conference Paper
Title

Multi-level partition of unity implicits

Abstract
We present a new shape representation, the multi-level partition of unity implicit surface, that allows us to construct surface models from very large sets of points. There are three key ingredients to our approach: 1) piecewise quadratic functions that capture the local shape of the surface, 2) weighting functions (the partitions of unity) that blend together these local shape functions, and 3) an octree subdivision method that adapts to variations in the complexity of the local shape. Our approach gives us considerable flexibility in the choice of local shape functions, and in particular we can accurately represent sharp features such as edges and corners by selecting appropriate shape functions. An error-controlled subdivision leads to an adaptive approximation whose time and memory consumption depends on the required accuracy. Due to the separation of local approximation and local blending, the representation is not global and can be created and evaluated rapidly. Because our surfaces are described using implicit functions, operations such as shape blending, offsets, deformations and CSG are simple to perform.
Author(s)
Ohtake, Y.
MPI Informatik
Belyaev, A.
MPI Informatik
Alexa, M.
TU Darmstadt GRIS
Turk, G.
Georgia Tech
Seidel, H.-P.
MPI Informatik
Mainwork
SIGGRAPH 2003. Proceedings  
Conference
SIGGRAPH, International Conference on Computer Graphics and Interactive Techniques 2003  
DOI
10.1145/882262.882293
Language
English
Fraunhofer-Institut für Graphische Datenverarbeitung IGD  
Keyword(s)
  • computational geometry

  • object modeling

  • object representation

  • adaptive distance field approximation

  • implicit modeling

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