Deep learning based approaches from semantic point clouds to semantic BIM models for heritage digital twin

被引:0
作者
Xiang Pan
Qing Lin
Siyi Ye
Li Li
Li Guo
Brendan Harmon
机构
[1] Sichuan Agricultural University,College of Landscape Architecture
[2] Sichuan Agricultural University,College of Information Engineering
[3] Sichuan Agricultural University,College of Science
[4] Louisiana State University,College of Art & Design
来源
Heritage Science | / 12卷
关键词
Heritage digital twin; Semantic point clouds; Unmanned Air Vehicle Digital Photogrammetry (UAVDP); Terrestrial laser scanning (TLS); Building Information Models (BIM); Deep learning; Virtual reality; Spatial analysis;
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学科分类号
摘要
This study focuses on the application of deep learning for transforming semantic point clouds into semantic Building Information Models (BIM) to create a Heritage Digital Twin, centering on Taoping Village, a site of historical and cultural significance in Sichuan, China. Utilizing advanced technologies such as unmanned aerial vehicles and terrestrial laser scanning, we capture detailed point cloud data of the village. A pivotal element of our methodology is the KP-SG neural network, which exhibits outstanding overall performance, particularly excelling in accurately identifying 11 categories. Among those categories, buildings and vegetation, achieves recognition rates of 81% and 83% respectively, and a 2.53% improvement in mIoU compared to KP-FCNN. This accuracy is critical for constructing detailed and accurate semantic BIM models of Taoping Village, facilitating comprehensive architecture and landscape analysis. Additionally, the KP-SG’s superior segmentation capability contributes to the creation of high-fidelity 3D models, enriching virtual reality experiences. We also introduce a digital twin platform that integrates diverse datasets, their semantic information, and visualization tools. This platform is designed to support process automation and decision-making and provide immersive experiences for tourists. Our approach, integrating semantic BIM models and a digital twin platform, marks a significant advancement in preserving and understanding traditional villages like Taoping and demonstrates the transformative potential of deep learning in cultural heritage conservation.
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