Variational shape approximation
Top Cited Papers
- 1 August 2004
- journal article
- conference paper
- Published by Association for Computing Machinery (ACM) in ACM Transactions on Graphics
- Vol. 23 (3) , 905-914
- https://doi.org/10.1145/1015706.1015817
Abstract
A method for concise, faithful approximation of complex 3D datasets is key to reducing the computational cost of graphics applications. Despite numerous applications ranging from geometry compression to reverse engineering, efficiently capturing the geometry of a surface remains a tedious task. In this paper, we present both theoretical and practical contributions that result in a novel and versatile framework for geometric approximation of surfaces. We depart from the usual strategy by casting shape approximation as a variational geometric partitioning problem. Using the concept of geometric proxies, we drive the distortion error down through repeated clustering of faces into best-fitting regions. Our approach is entirely discrete and error-driven, and does not require parameterization or local estimations of differential quantities. We also introduce a new metric based on normal deviation, and demonstrate its superior behavior at capturing anisotropy.Keywords
This publication has 39 references indexed in Scilit:
- Anisotropic polygonal remeshingACM Transactions on Graphics, 2003
- Multi-level partition of unity implicitsACM Transactions on Graphics, 2003
- Billboard clouds for extreme model simplificationACM Transactions on Graphics, 2003
- Resampling Feature and Blend Regions in Polygonal Meshes for Surface Anti-AliasingComputer Graphics Forum, 2001
- Optimal bit allocation in compressed 3D modelsComputational Geometry, 1999
- Optimal triangulation and quadric-based surface simplificationComputational Geometry, 1999
- Superfaces: polygonal mesh simplification with bounded errorIEEE Computer Graphics and Applications, 1996
- Anisotropic mesh transformations and optimal error controlApplied Numerical Mathematics, 1994
- On optimal triangular meshes for minimizing the gradient errorNumerische Mathematik, 1991
- Least squares quantization in PCMIEEE Transactions on Information Theory, 1982