Automated Assessment of Historic Tiles Degradation by Deep Learning Approach and HBIM Implementation: Application Cases in Seville
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Date
2025Unesco Subject/s
3305 Tecnología de la Construcción
3305.34 Topografía de la Edificación
Abstract
Recent advances in digital technologies and automated analysis techniques applied to historic buildings have shown significant benefits in efficiently collecting and interpreting data for conservation activities. Close-range photogrammetry has become a valuable tool for detecting damage in historic buildings due to its non-invasive nature, which allows for the identification of issues while preserving the building’s structure. In particular, detecting and measuring damage on historic tiled surfaces is essential for the maintenance and protection of these buildings. However, current visual inspection methods are time-consuming and labor-intensive. This study proposes an automated inspection system that uses a trained and validated convolutional neural network for classifying degradation phenomena based on images acquired through photogrammetric surveys. The detection, segmentation, and quantification strategy for degradation phenomena relies on deep learning techniques to automatically detect and measure damage affecting historic tiles. Additionally, the Historic Building Information Model (HBIM) serves as an information repository by including semantic and graphical components for comprehensive documentation management in cultural heritage conservation and restoration field. The results highlight the potential of these techniques for detecting heritage damage, supporting decision-makers in planning recovery and maintenance interventions. © The Author(s), under exclusive license to Springer Nature Switzerland AG 2025.
Recent advances in digital technologies and automated analysis techniques applied to historic buildings have shown significant benefits in efficiently collecting and interpreting data for conservation activities. Close-range photogrammetry has become a valuable tool for detecting damage in historic buildings due to its non-invasive nature, which allows for the identification of issues while preserving the building’s structure. In particular, detecting and measuring damage on historic tiled surfaces is essential for the maintenance and protection of these buildings. However, current visual inspection methods are time-consuming and labor-intensive. This study proposes an automated inspection system that uses a trained and validated convolutional neural network for classifying degradation phenomena based on images acquired through photogrammetric surveys. The detection, segmentation, and quantification strategy for degradation phenomena relies on deep learning techniques to automatically detect and measure damage affecting historic tiles. Additionally, the Historic Building Information Model (HBIM) serves as an information repository by including semantic and graphical components for comprehensive documentation management in cultural heritage conservation and restoration field. The results highlight the potential of these techniques for detecting heritage damage, supporting decision-makers in planning recovery and maintenance interventions. © The Author(s), under exclusive license to Springer Nature Switzerland AG 2025.





