Precision estimation of 3D objects using an observation distribution model in support of terrestrial laser scanner network design

D.D. Lichti , T.O. Chan , Kate Pexman
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引用次数: 1

Abstract

First order geometric network design is an important quality assurance process for terrestrial laser scanning of complex built environments for the construction of digital as-built models. A key design task is the determination of a set of instrument locations or viewpoints that provide complete site coverage while meeting quality criteria. Although simplified point precision measures are often used in this regard, precision measures for common geometric objects found in the built environment—planes, cylinders and spheres—are arguably more relevant indicators of as-built model quality. The computation of such measures at the design stage—which is not currently done—requires generation of artificial observations by ray casting, which can be a dissuasive factor for their adoption. This paper presents models for the rigorous computation of geometric object precision without the need for ray casting. Instead, a model for the 2D distribution of angular observations is coupled with candidate viewpoint-object geometry to derive the covariance matrix of parameters. Three-dimensional models are developed and tested for vertical cylinders, spheres and vertical, horizontal and tilted planes. Precision estimates from real experimental data were used as the reference for assessing the accuracy of the predicted precision—specifically the standard deviation—of the parameters of these objects. Results show that the mean accuracy of the model-predicted precision was 4.3% (of the read data value) or better for the planes, regardless of plane orientation. The mean accuracy of the cylinders was up to 6.2%. Larger differences were found for some datasets due to incomplete object coverage with the reference data, not due to the model. Mean precision for the spheres was similar, up to 6.1%, following adoption of a new model for deriving the angular scanning limits. The computational advantage of the proposed method over precision estimates from simulated, high-resolution point clouds is also demonstrated. The CPU time required to estimate precision can be reduced by up to three orders of magnitude. These results demonstrate the utility of the derived models for efficiently determining object precision in 3D network design in support of scanning surveys for reality capture.

基于观测分布模型的三维目标精度估计,支持地面激光扫描器网络设计
一阶几何网络设计是复杂建筑环境的地面激光扫描的一个重要质量保证过程,用于构建数字竣工模型。一项关键的设计任务是确定一组仪器位置或视点,以提供完整的现场覆盖范围,同时满足质量标准。尽管在这方面经常使用简化的点精度测量,但在建筑环境中发现的常见几何对象——平面、圆柱体和球体——的精度测量可以说是竣工模型质量的更相关指标。在设计阶段计算这些措施——目前尚未完成——需要通过射线投射生成人工观测结果,这可能是采用这些措施的一个阻碍因素。本文提出了在不需要光线投射的情况下严格计算几何对象精度的模型。相反,将角度观测的2D分布的模型与候选视点对象几何相耦合,以导出参数的协方差矩阵。开发并测试了垂直圆柱体、球体以及垂直、水平和倾斜平面的三维模型。真实实验数据的精度估计值被用作评估这些物体参数预测精度的参考,特别是标准偏差。结果表明,无论平面方向如何,模型预测精度的平均精度均为(读取数据值的)4.3%或更好。圆柱体的平均精度高达6.2%。一些数据集的差异更大,这是由于与参考数据的对象覆盖不完整,而不是由于模型。在采用新的模型推导角度扫描极限后,球体的平均精度相似,高达6.1%。与模拟的高分辨率点云的精度估计相比,该方法的计算优势也得到了证明。估计精度所需的CPU时间最多可以减少三个数量级。这些结果证明了导出的模型在3D网络设计中有效确定目标精度的实用性,以支持用于真实捕捉的扫描测量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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