Point Cloud Segmentation for Cultural Heritage Sites

Sandro Spina, K. Debattista, Keith Bugeja, A. Chalmers
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引用次数: 13

Abstract

Over the past few years, the acquisition of 3D point information representing the structure of real-world objects has become common practice in many areas. This is particularly true in the Cultural Heritage (CH) domain, where point clouds reproducing important and usually unique artifacts and sites of various sizes and geometric complexities are acquired. Specialized software is then usually used to process and organise this data. This paper addresses the problem of automatically organising this raw data by segmenting point clouds into meaningful subsets. This organisation over raw data entails a reduction in complexity and facilitates the post-processing effort required to work with the individual objects in the scene. This paper describes an efficient two-stage segmentation algorithm which is able to automatically partition raw point clouds. Following an intial partitioning of the point cloud, a RanSaC-based plane fitting algorithm is used in order to add a further layer of abstraction. A number of potential uses of the newly processed point cloud are presented; one of which is object extraction using point cloud queries. Our method is demonstrated on three point clouds ranging from 600K to 1.9M points. One of these point clouds was acquired from the pre-historic temple of Mnajdra consistsing of multiple adjacent complex structures.
文物遗址点云分割
在过去的几年里,获取代表现实世界物体结构的三维点信息已经成为许多领域的普遍做法。在文化遗产(CH)领域尤其如此,在这里,点云再现了各种大小和几何复杂性的重要且通常独特的文物和遗址。然后通常使用专门的软件来处理和组织这些数据。本文解决了通过将点云分割成有意义的子集来自动组织这些原始数据的问题。这种对原始数据的组织需要降低复杂性,并促进处理场景中单个对象所需的后处理工作。本文提出了一种有效的两阶段分割算法,能够对原始点云进行自动分割。在对点云进行初始划分之后,使用基于ransac的平面拟合算法来增加进一步的抽象层。提出了新处理的点云的一些潜在用途;其中之一是使用点云查询进行对象提取。我们的方法在三个点云上进行了验证,范围从600K到1.9M点。其中一个点云是从Mnajdra的史前寺庙中获得的,该寺庙由多个相邻的复杂结构组成。
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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