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Curvature-aware adaptive re-sampling for point-sampled geometry

机译:用于点采样几何的曲率感知自适应重采样

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摘要

With the emergence of large-scale point-sampled geometry acquired by high-resolution 3D scanning devices, it has become increasingly important to develop efficient algorithms for processing such models which have abundant geometric details and complex topology in general. As a preprocessing step, surface simplification is important and necessary for the subsequent operations and geometric processing. Owing to adaptive mean-shift clustering scheme, a curvature-aware adaptive re-sampling method is proposed for point-sampled geometry simplification. The generated sampling points are non-uniformly distributed and can account for the local geometric feature in a curvature aware manner, i.e. in the simplified model the sampling points are dense in the high curvature regions, and sparse in the low curvature regions. The proposed method has been implemented and demonstrated by several examples.
机译:随着高分辨率3D扫描设备采集的大规模点采样几何的出现,开发有效的算法来处理这类具有大量几何细节和复杂拓扑的模型变得越来越重要。作为预处理步骤,表面简化对于后续操作和几何处理非常重要,也是必需的。基于自适应均值漂移聚类方案,提出了一种曲率感知的自适应重采样方法,用于点采样几何简化。所生成的采样点是非均匀分布的,并且可以以曲率感知的方式考虑局部几何特征,即在简化模型中,采样点在高曲率区域中密集,而在低曲率区域中稀疏。所提出的方法已经实现并通过几个示例进行了演示。

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