基于方向推断和体积正则化的缺陷点云鲁棒表面重建

Yi-Ling Chen, S. Lai, T. Nishita
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引用次数: 0

摘要

曲面重建是三维数据采集和模型创建系统的关键环节。大多数现有的重建算法都是针对定向数据设计的,即具有表面法线的点集。然而,在某些应用中,明确的方向信息可能不可用,例如轮廓形状(SfC)。此外,从图像和相机校准中恢复的点集通常是有噪声的,并且包含缺陷,例如孔或不均匀采样。提出了一种利用方向推理和体积正则化方法从无方向和缺陷点集逼近光滑表面的鲁棒方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust surface reconstruction from defective point clouds by using orientation inference and volumetric regularization
Surface reconstruction is a critical stage in the 3D data acquisition and model creation system. Most existing reconstruction algorithms are designed for oriented data, i.e. point sets with surface normals. However, in some applications, explicit orientation information may not be available, e.g. Shape from Contour (SfC). Besides, the point sets recovered from images and camera calibration are typically noisy and contains defects, e.g. holes or non-uniform sampling. We present a robust method that achieves smooth surface approximation from unoriented and defective point sets by orientation inference and volumetric regularization.
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