A Review of Data Structure and Filtering in Handling 3D Big Point Cloud Data for Building Preservation

S. M. Mohd Isa, S. A. Abdul Shukor, N. A. Rahim, I. Maarof, Z. R. Yahya, A. Zakaria, A. Abdullah, R. Wong
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引用次数: 2

Abstract

3D digital documentation for buildings has become a necessary tool in preserving them. Heritage buildings are exposed from various kind of threats such as human negligence, natural disaster and weather changes. The fundamental in 3D digital documentation which is the 3D point cloud data has captures great attention and has widely used in many fields due to the availability of laser scanners. The use of laser scanning in engineering surveys is gaining attention due to its advantage of producing high accuracy data. In most situations, it also able to scan the entire required site, thus offers a good potential technique for large-scale applications like for heritage buildings preservation. The data, which consists of high density of points, can be delivered in a short time. However, this causes a massive amount of data generated and hence, it becomes very difficult to be managed. Due to this issue, there are critical needs to have a good method in managing 3D point cloud data to maintain features and visualization of buildings, specially the old and aged ones. This paper will review developed methods in handling these data, concentrating on two specific processes, which are data structure and data filtering. The 3D point cloud data is having a unique representation, thus researchers are no longer concentrating on the usual concepts of data registration, meshing and reconstruction to handle it, but data structure and data filtering are preferred. In data structure, mathematical methods incorporating geometric and topological techniques can be used for studying finite set of points. As most of the data captured contains noises and outliers, filtering is also important and can be treated as one of the processes that can be adapted in handling 3D point cloud data. The implementation of various solutions within these areas are presented in this paper and will be analyzed by emphasizing their contributions. Then, results will be studied to explain the effectiveness of the methods used in handling big point data. Finally, some future work for 3D point cloud handling will be highlighted to conclude this critical review focusing in building data for its preservation.
建筑保护三维大点云数据处理中的数据结构与滤波研究综述
建筑物的3D数字文件已成为保存建筑物的必要工具。文物建筑面临着人为疏忽、自然灾害和天气变化等各种威胁。三维数字文档的基础是三维点云数据,由于激光扫描仪的可用性,三维点云数据受到了广泛的关注,并在许多领域得到了广泛的应用。激光扫描在工程测量中的应用由于其产生高精度数据的优点而受到重视。在大多数情况下,它也能够扫描整个需要的地点,因此为遗产建筑保护等大规模应用提供了一个很好的潜在技术。数据由高密度的点组成,可以在短时间内传递。然而,这会产生大量的数据,因此,它变得非常难以管理。由于这个问题,迫切需要有一个好的方法来管理三维点云数据,以保持建筑物的特征和可视化,特别是老旧建筑物。本文将回顾处理这些数据的发展方法,集中在两个具体的过程,即数据结构和数据过滤。三维点云数据具有独特的表示形式,研究人员不再集中于通常的数据配准、网格划分和重构等概念来处理它,而是更倾向于数据结构和数据过滤。在数据结构中,结合几何和拓扑技术的数学方法可以用于研究有限点集。由于捕获的大多数数据都包含噪声和异常值,因此滤波也很重要,可以作为处理3D点云数据的过程之一。本文介绍了这些领域内各种解决方案的实施情况,并将通过强调其贡献来进行分析。然后,研究结果来解释处理大点数据所用方法的有效性。最后,将强调一些未来的3D点云处理工作,以总结这一关键审查,重点是构建数据以保存数据。
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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