Spline-based feature curves from point-sampled geometry
Joel Daniels, II, Tilo Ochotta, Linh K. Ha, Cláudio T. Silva
In The Visual Computer, 24(6), June 2008.
Abstract: Defining sharp features in a 3D model facilitates a better understanding of the surface and aids geometric processing and graphics applications, such as reconstruction, filtering, simplification, reverse engineering, visualization, and non-photo realism. We present a robust method that identifies sharp features in a point-based model by returning a set of smooth spline curves aligned along the edges. Our feature extraction leverages the concepts of robust moving least squares to locally project points to potential features. The algorithm processes these points to construct arc-length parameterized spline curves fit using an iterative refinement method, aligning smooth and continuous curves through the feature points. We demonstrate the benefits of our method with three applications: surface segmentation, surface meshing and point-based compression.
Keyword(s): Feature extraction, Moving least squares, Point-based modeling, Robust statistics, B-splines
BibTeX format:
@article{Daniels:2008:SFC,
  author = {Joel Daniels, II and Tilo Ochotta and Linh K. Ha and Cláudio T. Silva},
  title = {Spline-based feature curves from point-sampled geometry},
  journal = {The Visual Computer},
  volume = {24},
  number = {6},
  pages = {449--462},
  month = jun,
  year = {2008},
}
Search for more articles by Joel Daniels, II.
Search for more articles by Tilo Ochotta.
Search for more articles by Linh K. Ha.
Search for more articles by Cláudio T. Silva.

Return to the search page.


graphbib: Powered by "bibsql" and "SQLite3."