Machine learning for conservation of architectural heritage

Author:

Karadag İlkerORCID

Abstract

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.

Publisher

Emerald

Subject

Urban Studies,Geography, Planning and Development,Architecture

Reference38 articles.

1. Seismic performance assessment of masonry tile domes through nonlinear finite-element analysis;Journal of Performance of Constructed Facilities,2012

2. Automated classification of heritage buildings for as-built bim using machine learning techniques;ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences,2017

3. Structured becoming: evolutionary processes in design engineering;Architectural Design,2010

4. Chaillou, S. (2020), “ArchiGAN: artificial intelligence x architecture”, in Philip, F.Y., Mike, X., Neil, L., Jiawei, Y. and Xiang, Wang. (Eds), Architectural Intelligence, Springer, Singapore, pp. 117-127, doi: 10.1007/978-981-15-6568-7_8.

5. Chen, X., Yan, D., Rein, H., John, S., Ilya, S. and Pieter, A. (2016), “InfoGAN: interpretable representation learning by information maximizing generative adversarial nets” in Lee, D., Sugiyama, M., Luxburg, U., Guyon, I. and Garnett, R. (Eds), Advances in Neural Information Processing Systems 29 (NIPS 2016), Barcelona, Spain, arXiv:1606.03657.

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