Determination of building flood risk maps from LiDAR mobile mapping data
Yu Feng, Qing Xiao, Claus Brenner, Aaron Peche, Juntao Yang, Udo, Feuerhake, Monika Sester

TL;DR
This paper introduces a semi-supervised deep learning method to automatically extract building facade openings from LiDAR data, aiding flood risk mapping and disaster prevention in urban areas.
Contribution
It presents a novel semi-supervised approach combining rule-based pseudo-labeling with deep learning to efficiently identify building openings from LiDAR data, reducing manual annotation effort.
Findings
Deep learning outperforms rule-based methods by 14.6% F1-score.
Five hours of human supervision improve model performance by 6.2%.
Generated flood risk maps enhance disaster prevention planning.
Abstract
With increasing urbanization, flooding is a major challenge for many cities today. Based on forecast precipitation, topography, and pipe networks, flood simulations can provide early warnings for areas and buildings at risk of flooding. Basement windows, doors, and underground garage entrances are common places where floodwater can flow into a building. Some buildings have been prepared or designed considering the threat of flooding, but others have not. Therefore, knowing the heights of these facade openings helps to identify places that are more susceptible to water ingress. However, such data is not yet readily available in most cities. Traditional surveying of the desired targets may be used, but this is a very time-consuming and laborious process. This research presents a new process for the extraction of windows and doors from LiDAR mobile mapping data. Deep learning object…
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