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Automated Pipe Spool Recognition in Cluttered Point Clouds

机译:杂波点云中的自动管道阀芯识别

摘要

Construction management is inextricably linked to the awareness and control of 3D geometry. Progress tracking, quality assurance/quality control, and the location, movement, and assembly of materials are all critical processes that rely on the ability to monitor 3D geometry. Therefore, advanced capabilities in site metrology and computer vision will be the foundation for the next generation of assessment tools that empower project leaders, planners, and workers.3D imaging devices enable the capture of the existing geometric conditions of a construction site or a fabricated mechanical or structural assembly objectively, accurately, quickly, and with greater detail and continuity than any manual measurement methods. Within the construction literature, these devices have been applied in systems that compare as-built scans to 3D CAD design files in order to inspect the geometrical compliance of a fabricated assembly to contractually stipulated dtolerances. However, before comparisons of this type can be made, the particular object of interest needs to be isolated from background objects and clutter captured by the indiscriminate 3D imaging device. Thus far, object of interest extraction from cluttered construction data has remained a manual process. This thesis explores the process of automated information extraction in order to improve the availability of information about 3D geometries on construction projects and improve the execution of component inspection, and progress tracking. Specifically, the scope of the research is limited to automatically recognizing and isolating pipe spools from their cluttered point cloud scans. Two approaches are developed and evaluated.The contributions of the work are as follows: (1) A number of challenges involved in applying RANdom SAmple Consensus (RANSAC) to pipe spool recognition are identified. (2) An effective spatial search and pipe spool extraction algorithm based on local data level curvature estimation, density-based clustering, and bag-of-features matching is presented. The algorithm is validated on two case studies and is shown to successfully extract pipe spools from cluttered point clouds and successfully differentiate between the specific pipe spool of interest and other similar pipe spools in the same search space. Finally, (3) the accuracy of curvature estimation using data collected by low-cost range-cameras is tested and the viability of use of low-cost range-cameras for object search, localization, and extraction is critically assessed.
机译:施工管理与3D几何的认知和控制密不可分。进度跟踪,质量保证/质量控制以及材料的位置,移动和组装都是关键过程,这些过程都依赖于监视3D几何形状的能力。因此,先进的现场计量和计算机视觉功能将成为下一代评估工具的基础,这些评估工具可为项目负责人,规划人员和工人提供支持.3D成像设备可捕获建筑工地或预制机械的现有几何条件比任何手动测量方法更客观,准确,快速,更详细,更连续地进行结构装配。在建筑文献中,这些设备已应用于将竣工扫描与3D CAD设计文件进行比较的系统中,以检查装配的装配体对合同规定的公差的几何柔度。但是,在可以进行这种类型的比较之前,需要将特定的关注对象与背景对象隔离,并由不加区分的3D成像设备捕获杂乱的对象。到目前为止,从混乱的施工数据中提取感兴趣的对象仍然是手动过程。本文探讨了自动信息提取的过程,以提高有关建设项目中3D几何信息的可用性,并改善组件检查和进度跟踪的执行。具体而言,研究范围仅限于自动识别并从杂乱的点云扫描中隔离出线轴。开发并评估了两种方法。工作的贡献如下:(1)识别出将随机抽样共识(RANSAC)应用于管道阀芯识别所涉及的许多挑战。 (2)提出了一种基于局部数据水平曲率估计,基于密度的聚类和特征包匹配的有效空间搜索和管轴提取算法。该算法在两个案例研究中得到了验证,并且被证明可以成功地从凌乱的点云中提取出线轴,并成功地区分了特定的目标线轴和同一搜索空间中的其他类似的线轴。最后,(3)测试了使用低成本测距相机收集的数据进行曲率估计的准确性,并严格评估了使用低成本测距相机进行对象搜索,定位和提取的可行性。

著录项

  • 作者

    Czerniawski Thomas;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 en
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