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Feature Sensitive Mesh Segmentation with Mean Shift
Cambridge, Massachusetts June 13-June 17
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/SMI.2005.21International Conference on Shape Mod ...
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Hitoshi Yamauchi, MPI Informatik
Seungyong Lee, Pohang University of Science & Technology
Yunjin Lee, Pohang University of Science & Technology
Yutaka Ohtake, Volume-CAD Development Team
Alexander Belyaev, MPI Informatik
Hans-Peter Seidel, MPI Informatik
Feature sensitive mesh segmentation is important for many computer graphics and geometric modeling applications. In this paper, we develop a mesh segmentation method which is capable of producing high-quality shape partitioning. It respects fine shape features and works well on various types of shapes, including natural shapes and mechanical parts. The method combines a procedure for clustering mesh normals with a modification of the mesh chartification technique in [23]. For clustering of mesh normals, we adopt Mean Shift, a powerful general purpose technique for clustering scattered data. We demonstrate advantages of our method by comparing it with two state-of-the-art mesh segmentation techniques.
Citation:
Hitoshi Yamauchi, Seungyong Lee, Yunjin Lee, Yutaka Ohtake, Alexander Belyaev, Hans-Peter Seidel, "Feature Sensitive Mesh Segmentation with Mean Shift," smi, pp.238--245, International Conference on Shape Modeling and Applications 2005 (SMI' 05), 2005
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