建筑遗产保护的机器学习

IF 1.5 4区 经济学 0 ARCHITECTURE
I. Karadag
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引用次数: 4

摘要

为了保护文化遗产,对受损或被摧毁的历史建筑进行准确的记录,多年来一直是建筑界的议事日程。从这个意义上说,这项研究使用机器学习(ML)来预测早期奥斯曼墓葬范围内历史建筑的缺失/损坏部分。设计/方法/方法本研究使用条件生成对抗网络(cgan),这是ML的一个子集,用于预测早期奥斯曼墓葬范围内历史建筑的缺失/损坏部分。本文讨论了使用GAN作为机器学习框架是一种有效的历史建筑缺失/损坏部分估计方法。本研究使用了近200座历史建筑的平面图纸,这些图纸是逐一准备的,作为ML过程的数据集。研究结果:该研究通过(1)生成混合方法框架,(2)验证拟议框架在历史建筑修复中的有效性,以及(3)评估所生成数据的上下文依赖性,为该领域做出了贡献。本文提供了如何将机器学习应用于建筑遗产保护的见解。这表明,在这个过程中使用一个全面的数据集可以非常有效地获得成功的结果。该研究结果将为ML保护文化遗产的新研究提供参考,并将对文献做出重大贡献。研究的局限性/意义在宏观层面上,关于文件数据的解释和缺失数据的产生已经获得了可靠的结果。在没有细节的宏观层面上,当涉及到墙壁、圆顶、窗户、门等缺失的建筑组件的识别和再生时,该框架非常有效。另一方面,由于每个建筑遗产的案例都非常详细和独特,因此拟议的方法框架尚未准备好进行高级恢复步骤。因此,建议的文物建筑缺失构件再生框架受限于基本的几何形式,这意味着所提到的构件的建筑细节,包括装饰、材料、建筑层的识别等都没有被涵盖。关于建筑中使用的ML模型的一般文献主要包括设计探索和平面图/城市布局生成。使用机器学习保护建筑遗产的更具体的研究主要集中在3D点云数据上的建筑构件识别(1)或遗产建筑的表面损伤检测(2)。然而,我们提出了一个混合的方法框架,用于解释记录的建筑数据和历史建筑缺失部分的再生。此外,本文的方法和结果构成了ML进一步研究的指南,因此有助于架构师在恢复的早期阶段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning for conservation of architectural heritage
PurposeAccurate documentation of damaged or destroyed historical buildings to protect cultural heritage has been on the agenda of architecture for many years. In that sense, this study uses machine learning (ML) to predict missing/damaged parts of historical buildings within the scope of early ottoman tombs.Design/methodology/approachThis study uses conditional generative adversarial networks (cGANs), a subset of ML to predict missing/damaged parts of historical buildings within the scope of early Ottoman tombs. This paper discusses that using GAN as a ML framework is an efficient method for estimating missing/damaged parts of historical buildings. The study uses the plan drawings of nearly 200 historical buildings, which were prepared one by one as a data set for the ML process.FindingsThe study contributes to the field by (1) generating a mixed methodological framework, (2) validating the effectiveness of the proposed framework in the restitution of historical buildings and (3) assessing the contextual dependency of the generated data. The paper provides insights into how ML can be used in the conservation of architectural heritage. It suggests that using a comprehensive data set in the process can be highly effective in getting successful results. The findings of the research will be a reference for new studies on the conservation of cultural heritage with ML and will make a significant contribution to the literature.Research limitations/implicationsA reliable outcome has been obtained concerning the interpretation of documented data and the generation of missing data at the macro level. The framework is remarkably effective when it comes to the identification and re-generation of missing architectural components like walls, domes, windows, doors, etc. on a macro level without details. On the other hand, the proposed methodological framework is not ready for advanced steps of restitution since every case of architectural heritage is very detailed and unique. Therefore, the proposed framework for re-generation of missing components of heritage buildings is limited by the basic geometrical form which means the architectural details of the mentioned components including ornaments, materials, identification of construction layers, etc. are not covered.Originality/valueThe generic literature as to ML models used in architecture mostly constitutes design exploration and floor plan/urban layout generation. More specific studies in the conservation of architectural heritage by using ML mostly focus on architectural component recognition over 3D point cloud data (1) or superficial damage detection of heritage buildings (2). However, we propose a mixed methodological framework for the interpretation of documented architectural data and the regeneration of missing parts of historical buildings. In addition, the methodology and the results of this paper constitute a guide for further research on ML and consequently contribute to architects in the early phases of restitution.
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来源期刊
CiteScore
2.30
自引率
18.20%
发文量
48
期刊介绍: The journal of an association of institues and individuals concerned with housing, design and development in the built environment. Theories, tools and pratice with special emphasis on the local scale.
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