Classification of structural building damage grades from multi-temporal photogrammetric point clouds using a machine learning model trained on virtual laser scanning data
Vivien Zahs, Katharina Anders, Julia Kohns, Alexander Stark, and Bernhard H\"ofle

TL;DR
This paper introduces a machine learning approach trained on virtual laser scanning data to automatically classify multi-grade building damage from multi-temporal photogrammetric point clouds, demonstrating high accuracy and transferability across regions.
Contribution
The study presents a novel method combining object-specific change features and a random forest classifier trained on virtual data for damage assessment from real-world point clouds.
Findings
High classification accuracy (92-95%) achieved.
Model transferability across different data sources and regions demonstrated.
Performance improves minimally with real-world training data.
Abstract
Automatic damage assessment based on UAV-derived 3D point clouds can provide fast information on the damage situation after an earthquake. However, the assessment of multiple damage grades is challenging due to the variety in damage patterns and limited transferability of existing methods to other geographic regions or data sources. We present a novel approach to automatically assess multi-class building damage from real-world multi-temporal point clouds using a machine learning model trained on virtual laser scanning (VLS) data. We (1) identify object-specific change features, (2) separate changed and unchanged building parts, (3) train a random forest machine learning model with VLS data based on object-specific change features, and (4) use the classifier to assess building damage in real-world point clouds from photogrammetry-based dense image matching (DIM). We evaluate classifiers…
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Taxonomy
Topics3D Surveying and Cultural Heritage · Remote Sensing and LiDAR Applications · Infrastructure Maintenance and Monitoring
