The development of multi-scale data management for CityGML-based 3D buildings

The CityGML model is now the norm for smart city or digital twin city development for better planning, management, risk-related modelling and other ap-plications. CityGML comes with five levels of detail (LoD), mainly constructed from point cloud measurements and images of several systems, resulting...

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Bibliographic Details
Main Authors: Karim, Hairi, Abdul Rahman, Alias, Azri, Suhaibah, Halim, Zurairah
Format: Article
Language:English
Published: AGH University of Science and Technology Press 2022
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Online Access:http://eprints.utm.my/id/eprint/100276/1/AliasAbdulRahman2022_TheDevelopmentofMultiScaleDataManagementforCityGML.pdf
http://eprints.utm.my/id/eprint/100276/
http://dx.doi.org/10.7494/geom.2022.16.1.71
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Summary:The CityGML model is now the norm for smart city or digital twin city development for better planning, management, risk-related modelling and other ap-plications. CityGML comes with five levels of detail (LoD), mainly constructed from point cloud measurements and images of several systems, resulting in a va-riety of accuracies and detailed models. The LoDs, also known as pre-defined multi-scale models, require large storage-memory-graphic consumption com-pared to single scale models. Furthermore, these multi-scales have redundancy in geometries, attributes, are costly in terms of time and workload in updating tasks, and are difficult to view in a single viewer. It is essential for data owners to engage with a suitable multi-scale spatial management solution in mini-mizes the drawbacks of the current implementation. The proper construction, control and management of multi-scale models are needed to encourage and expedite data sharing among data owners, agencies, stakeholders and public users for efficient information retrieval and analyses. This paper discusses the construction of the CityGML model with different LoDs using several datasets. A scale unique ID is introduced to connect all respective LoDs for cross-LoD information queries within a single viewer. The paper also highlights the bene-fits of intermediate outputs and limitations of the proposed solution, as well as suggestions for the future.