Following an earthquake, it is vital to quickly evaluate the safety of the impacted areas. Damage detection systems, powered by computer vision and deep learning, can assist experts in this endeavor. However, the lack of extensive, labeled datasets poses a challenge to the development of these systems. In this study, we introduce a technique for generating semi-synthetic images to be used as data augmentation during the training of a damage detection system. We specifically aim to generate images of cracks, which are a prevalent and indicative form of damage. The central concept is to employ parametric meta-annotations to guide the process of generating cracks on 3D models of real-word structures. The governing parameters of these meta-annotations can be adjusted iteratively to yield images that are optimally suited for improving detectors’ performance. Comparative evaluations demonstrated that a crack detection system trained with a combination of real and semi-synthetic images outperforms a system trained on real images alone.

Improving Post-Earthquake Crack Detection Using Semi-Synthetic Generated Images

Dondi, Piercarlo
;
Gullotti, Alessio;Inchingolo, Michele;Senaldi, Ilaria;Casarotti, Chiara;Lombardi, Luca;Piastra, Marco
2025-01-01

Abstract

Following an earthquake, it is vital to quickly evaluate the safety of the impacted areas. Damage detection systems, powered by computer vision and deep learning, can assist experts in this endeavor. However, the lack of extensive, labeled datasets poses a challenge to the development of these systems. In this study, we introduce a technique for generating semi-synthetic images to be used as data augmentation during the training of a damage detection system. We specifically aim to generate images of cracks, which are a prevalent and indicative form of damage. The central concept is to employ parametric meta-annotations to guide the process of generating cracks on 3D models of real-word structures. The governing parameters of these meta-annotations can be adjusted iteratively to yield images that are optimally suited for improving detectors’ performance. Comparative evaluations demonstrated that a crack detection system trained with a combination of real and semi-synthetic images outperforms a system trained on real images alone.
2025
Computer Vision – ECCV 2024 Workshops
Esperti anonimi
Inglese
ECCV2024 Workshop
29 Settembre - 4 Ottobre 2024
Milano
Internazionale
ELETTRONICO
15642
19
35
17
9783031919060
9783031919077
Crack Detection, Convolutional Neural Network, YOLO, Image Generation, Data Augmentation, 3D Modeling
none
Dondi, Piercarlo; Gullotti, Alessio; Inchingolo, Michele; Senaldi, Ilaria; Casarotti, Chiara; Lombardi, Luca; Piastra, Marco
273
info:eu-repo/semantics/conferenceObject
7
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/1525775
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