为无组织点云保留整合功能

Bao Li, Wei Jiang, Zhi-Quan Cheng, Gang Dang, Shiyao Jin
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引用次数: 2

摘要

我们提出了一种新的方法来巩固无组织点云的噪声,异常值,非均匀性和尖锐的特征。这种方法是特征保留的,在给定初始法向估计的情况下,它能够恢复原始几何数据中通常在获取过程中被污染的尖锐特征。我们方法的关键成分是一个来自正态空间的加权项,作为最近提出的巩固技术的有效补充。此外,在合并过程中采用法向软化步骤,以获得除每个点的位置外关于尖锐特征的法向信息。在合成和真实扫描模型上的实验验证了我们的方法在产生去噪、均匀分布和特征保留的点云方面的能力,这是大多数表面重建方法所首选的。
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Feature preserving consolidation for unorganized point clouds
We introduce a novel method for the consolidation of unorganized point clouds with noise, outliers, non-uniformities as well as sharp features. This method is feature preserving, in the sense that given an initial estimation of normal, it is able to recover the sharp features contained in the original geometric data which are usually contaminated during the acquisition. The key ingredient of our approach is a weighting term from normal space as an effective complement to the recently proposed consolidation techniques. Moreover, a normal mollification step is employed during the consolidation to get normal information respecting sharp features besides the position of each point. Experiments on both synthetic and real-world scanned models validate the ability of our approach in producing denoised, evenly distributed and feature preserving point clouds, which are preferred by most surface reconstruction methods.
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