Abstract
The automation of digital twinning for existing bridges from point clouds remains unresolved. Previous research yielded methods that can generate surface primitives combined with rule-based classification to create labelled cuboids and cylinders. While these methods work well in synthetic datasets or simplified cases, they encounter huge challenges when dealing with real-world point clouds. The proposed framework employs bridge engineering knowledge that mimics the intelligence of human modellers to detect and model reinforced concrete bridge objects in imperfect point clouds. Experiments on ten bridge point clouds indicate the framework can achieve high and reliable performance of geometric digital twin generation of existing bridges.
Cite
CITATION STYLE
Lu, R., & Brilakis, I. (2019). GENERATING BRIDGE GEOMETRIC DIGITAL TWINS FROM POINT CLOUDS. In Proceedings of the European Conference on Computing in Construction (pp. 367–376). European Council on Computing in Construction (EC3). https://doi.org/10.35490/EC3.2019.182
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.