Deep vision-based stone deterioration assessment of Indian heritage structures using synthetic and real-time environment
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Bibliographic Details
Author(s): |
T. Jothi Saravanan
(School of Infrastructure, Indian Institute of Technology Bhubaneswar, India)
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Medium: | conference paper | ||||
Language(s): | English | ||||
Conference: | IABSE Congress: Engineering for Sustainable Development, New Delhi, India, 20-22 September 2023 | ||||
Published in: | IABSE Congress New Delhi 2023 | ||||
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Page(s): | 934-941 | ||||
Total no. of pages: | 8 | ||||
DOI: | 10.2749/newdelhi.2023.0934 | ||||
Abstract: |
The conservation or preservation of heritage-like historical structures is the inclusive part of sustainable development. Manually monitoring the damage and deterioration of historical structures over time is time-consuming and laborious. The workforce is significantly expanded, along with the likelihood of mistakes, in situations involving huge quantities of priceless cultural assets. As incorrect degradation diagnosis may lead to long-lasting structural damage in historic buildings, it's important to work on developing new inspection techniques. Computer vision techniques provide a practical way to reduce or do away with the need for human intervention in the field. The fundamental objective of this research is to create a fully automated visual inspection system to replace existing, costly approaches. The present study uses Convolutional Neural Network (CNN) to detect damage in historic stone structures. This research work involves collecting images with vegetation from nearby historic structures, and generating synthetic images using Blender 3D's synthetic environment. A model for detecting or segmenting damage based on visual inspection is developed using this data. The model is trained with synthetic data and then tested using real-world images. Therefore, the Mask R-CNN algorithm is used to identify, localize, and plot the deteriorations in historical stone structures (defect considered vegetation class). |
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Keywords: |
damage detection segmentation deep learning automatic inspection convolutional neural networks
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