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历史建筑的虚拟拆解:一种将多尺度点云分类为建筑元素的自动方法的实验与评估

Virtual Disassembling of Historical Edifices: Experiments and Assessments of an Automatic Approach for Classifying Multi-Scalar Point Clouds into Architectural Elements.

作者信息

Murtiyoso Arnadi, Grussenmeyer Pierre

机构信息

Photogrammetry and Geomatics Group, ICube Laboratory UMR 7357, INSA Strasbourg, University of Strasbourg, F-67000 Strasbourg, France.

出版信息

Sensors (Basel). 2020 Apr 11;20(8):2161. doi: 10.3390/s20082161.

DOI:10.3390/s20082161
PMID:32290433
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7218741/
Abstract

3D heritage documentation has seen a surge in the past decade due to developments in reality-based 3D recording techniques. Several methods such as photogrammetry and laser scanning are becoming ubiquitous amongst architects, archaeologists, surveyors, and conservators. The main result of these methods is a 3D representation of the object in the form of point clouds. However, a solely geometric point cloud is often insufficient for further analysis, monitoring, and model predicting of the heritage object. The semantic annotation of point clouds remains an interesting research topic since traditionally it requires manual labeling and therefore a lot of time and resources. This paper proposes an automated pipeline to segment and classify multi-scalar point clouds in the case of heritage object. This is done in order to perform multi-level segmentation from the scale of a historical neighborhood up until that of architectural elements, specifically pillars and beams. The proposed workflow involves an algorithmic approach in the form of a toolbox which includes various functions covering the semantic segmentation of large point clouds into smaller, more manageable and semantically labeled clusters. The first part of the workflow will explain the segmentation and semantic labeling of heritage complexes into individual buildings, while a second part will discuss the use of the same toolbox to segment the resulting buildings further into architectural elements. The toolbox was tested on several historical buildings and showed promising results. The ultimate intention of the project is to help the manual point cloud labeling, especially when confronted with the large training data requirements of machine learning-based algorithms.

摘要

在过去十年中,由于基于现实的三维记录技术的发展,三维遗产记录有了显著增长。摄影测量和激光扫描等几种方法在建筑师、考古学家、测量员和文物保护者中变得越来越普遍。这些方法的主要成果是以点云形式呈现的物体三维表示。然而,单纯的几何点云通常不足以对遗产对象进行进一步分析、监测和模型预测。点云的语义标注仍然是一个有趣的研究课题,因为传统上它需要人工标注,因此需要大量时间和资源。本文提出了一种自动化流程,用于对遗产对象的多尺度点云进行分割和分类。这样做是为了从历史街区的尺度到建筑元素(特别是柱子和梁)的尺度进行多层次分割。所提出的工作流程涉及一种以工具箱形式的算法方法,该工具箱包括各种功能,涵盖将大型点云语义分割成更小、更易于管理且带有语义标签的聚类。工作流程的第一部分将解释如何将遗产建筑群分割并语义标注为单个建筑物,而第二部分将讨论如何使用同一个工具箱将所得建筑物进一步分割为建筑元素。该工具箱在几座历史建筑上进行了测试,并显示出了有前景的结果。该项目的最终目的是帮助人工进行点云标注,尤其是在面对基于机器学习的算法对大量训练数据的需求时。

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本文引用的文献

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Deep Learning on Point Clouds and Its Application: A Survey.基于点云的深度学习及其应用:综述。
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通过点云自动分析进行历史 Timber 屋顶结构重建。
J Imaging. 2022 Jan 13;8(1):10. doi: 10.3390/jimaging8010010.