平滑的
稳健性(进化)
计算机科学
算法
噪音(视频)
简单
数学优化
多边形网格
迭代法
数学
稳健统计
噪声数据
计算机视觉
边缘保持平滑
迭代求精
人工智能
噪声测量
拉普拉斯平滑
工作(物理)
作者
Thouis R. Jones,Frédo Durand,Mathieu Desbrun
标识
DOI:10.1145/882262.882367
摘要
With the increasing use of geometry scanners to create 3D models, there is a rising need for fast and robust mesh smoothing to remove inevitable noise in the measurements. While most previous work has favored diffusion-based iterative techniques for feature-preserving smoothing, we propose a radically different approach, based on robust statistics and local first-order predictors of the surface. The robustness of our local estimates allows us to derive a non-iterative feature-preserving filtering technique applicable to arbitrary "triangle soups". We demonstrate its simplicity of implementation and its efficiency, which make it an excellent solution for smoothing large, noisy, and non-manifold meshes.
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