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Three-dimensional point cloud registration by matching surface features with relaxation labeling method

机译:通过将表面特征与松弛标记方法匹配来进行三维点云配准

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摘要

Automated approaches for the conversion of multiple overlapped three-dimensional (3D) point clouds into an integrated surface shape measurement in the form of a complete polygon surface are important in the general field of reverse engineering. Traditionally, the conversion process is achieved in a semi-automated manner that requires extensive user interaction. In this work, automated methods for point set registration are developed and experimentally validated using polygon surface reconstruction to represent raw, 3D point clouds obtained from non-contacting measurement systems. Using local differential properties extracted from the polygon surface representation for a measurement data set, a robust sculpture surface feature-matching method is described for automatically obtaining the initial orientation and mismatch estimates for each overlapped data set. Using both simulated and measured experimental data to quantify the performance of the method, it is shown that differential local surface features are appropriate metrics for identifying common features and initializing the relative positions of individual point clouds, thereby providing the basis for automating the registration and integration processes while improving the speed of the surface distance minimization method developed for the initial registration process.
机译:在逆向工程的一般领域中,用于将多个重叠的三维(3D)点云转换为完整多边形表面形式的集成表面形状测量的自动化方法非常重要。传统上,转换过程是以半自动化的方式完成的,需要大量的用户交互。在这项工作中,开发了用于点集配准的自动化方法,并使用多边形表面重构来实验验证该方法,以表示从非接触式测量系统获得的原始3D点云。使用从多边形表面表示中提取的局部微分特性作为测量数据集,描述了一种鲁棒的雕塑表面特征匹配方法,用于自动获取每个重叠数据集的初始方向和不匹配估计。使用模拟和测量的实验数据来量化该方法的性能,结果表明,不同的局部表面特征是用于识别共同特征和初始化各个点云的相对位置的适当度量,从而为自动化配准和集成提供了基础改进表面速度的方法,同时为初始配准过程开发了最小化表面距离的方法。

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