From point clouds to CityGML 3.0: An approach to multi-granular urban road modelling
Keywords: Point cloud processing, 3D city models, Mobile laser scanning, Semantic integration, Urban space
Abstract. Accurate semantic modelling of urban road infrastructure is critical for digital twins, traffic simulations, and smart city planning. This study presents a structured methodology to transform road elements segmented from urban point clouds into CityGML 3.0-compliant representations. Leveraging CityGML’s hierarchical Transportation module, the approach introduces a multi-level granularity framework—area, way, and lane—for representing road components like sidewalks, driving lanes, and parking areas. Following geometric pre-processing, segmented surfaces are semantically mapped into appropriate CityGML classes using a rule-based mapping strategy, enriched with descriptive attributes and hierarchical identifiers. The resulting XML-based datasets were validated and visualized using industry-standard tools such as FME, QGIS, and 3DCityDB, demonstrating successful integration into city-scale digital environments.