Machine and Deep Learning Implementations for Heritage Building Information Modelling: A Critical Review of Theoretical and Applied Research

IF 2.1 3区 计算机科学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS ACM Journal on Computing and Cultural Heritage Pub Date : 2024-02-27 DOI:10.1145/3649442
Aleksander Gil, Yusuf Arayici, Bimal Kumar, Richard Laing
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Abstract

Research domain and Problem: HBIM modelling from point cloud data has become a crucial research topic in the last decade since it is potentially considered the central data model paving the way for the digital heritage practice beyond digitization. Reality Capture technologies such as terrestrial laser scanning, drone-mounted LiDAR sensors and photogrammetry enable the reality capture with a sub-millimetre accurate point cloud file that can be used as a reference file for Heritage Building Information Modelling (HBIM). However, HBIM modelling from the point cloud data of heritage buildings is mainly manual, error-prone, and time-consuming. Furthermore, image processing techniques are insufficient for classification and segmenting of point cloud data to speed up and enhance the current workflow for HBIM modelling.

Due to the challenges and bottlenecks in the scan-to-HBIM process, which is commonly criticized as complex with its bespoke requirements, semantic segmentation of point clouds is gaining popularity in the literature.

Research Aim and Methodology: Therefore, this paper aims to provide a thorough critical review of Machine Learning and Deep Learning methods for point cloud segmentation, classification, and BIM geometry automation for cultural heritage case study applications.

Research findings: This paper files the challenges of HBIM practice and the opportunities for semantic point cloud segmentation found across academic literature in the last decade. Beyond definitions and basic occurrence statistics, this paper discusses the success rates and implementation challenges of machine and deep learning classification methods.

Research value and contribution: This paper provides a holistic review of point cloud segmentation and its potential for further development and application in the Cultural Heritage sector. The critical analysis provides insight into the current state-of-the-art methods and advises on their suitability for HBIM projects. The review has identified highly original threads of research, which hold the potential to significantly influence practice and further applied research.

HBIM, Point Cloud, Semantic Segmentation, Classification, Machine Learning, Deep Learning

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遗产建筑信息建模的机器学习和深度学习实施:理论与应用研究评述
研究领域和问题:从点云数据中建立 HBIM 模型在过去十年中已成为一个重要的研究课题,因为它有可能被视为中心数据模型,为数字化以外的数字遗产实践铺平道路。现实捕捉技术,如陆地激光扫描、无人机安装的激光雷达传感器和摄影测量,可实现现实捕捉和亚毫米级精度的点云文件,可用作遗产建筑信息模型(HBIM)的参考文件。然而,根据文物建筑的点云数据进行 HBIM 建模主要是手工操作,容易出错,而且耗时。此外,图像处理技术不足以对点云数据进行分类和分割,从而加快和改进当前的 HBIM 建模工作流程。由于从扫描到 HBIM 的过程中存在挑战和瓶颈,而这一过程通常被批评为具有定制要求的复杂过程,因此点云的语义分割在文献中越来越受欢迎:因此,本文旨在为文化遗产案例研究应用中的点云分割、分类和 BIM 几何自动化提供机器学习和深度学习方法的全面评论:本文介绍了 HBIM 实践所面临的挑战,以及过去十年学术文献中发现的语义点云分割的机遇。除了定义和基本的发生率统计,本文还讨论了机器和深度学习分类方法的成功率和实施挑战:本文全面回顾了点云分割及其在文化遗产领域进一步发展和应用的潜力。批判性分析深入剖析了当前最先进的方法,并就这些方法是否适合 HBIM 项目提出了建议。综述确定了极具原创性的研究线索,这些线索有可能对实践和进一步的应用研究产生重大影响。 HBIM、点云、语义分割、分类、机器学习、深度学习
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来源期刊
ACM Journal on Computing and Cultural Heritage
ACM Journal on Computing and Cultural Heritage Arts and Humanities-Conservation
CiteScore
4.60
自引率
8.30%
发文量
90
期刊介绍: ACM Journal on Computing and Cultural Heritage (JOCCH) publishes papers of significant and lasting value in all areas relating to the use of information and communication technologies (ICT) in support of Cultural Heritage. The journal encourages the submission of manuscripts that demonstrate innovative use of technology for the discovery, analysis, interpretation and presentation of cultural material, as well as manuscripts that illustrate applications in the Cultural Heritage sector that challenge the computational technologies and suggest new research opportunities in computer science.
期刊最新文献
Heritage Iconographic Content Structuring: from Automatic Linking to Visual Validation Digitising the Deep Past: Machine Learning for Rock Art Motif Classification in an Educational Citizen Science Application Interpretable Clusters for Representing Citizens’ Sense of Belonging through Interaction with Cultural Heritage Classification of Impressionist and Pointillist paintings based on their brushstrokes characteristics ZoAM GameBot: a Journey to the Lost Computational World in the Amazonia
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