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Autori principali: Wen, Ya, Qiao, Yutong, Lam, Chi Chiu, Brilakis, Ioannis, Lee, Sanghoon, Wong, Mun On
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2511.01399
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author Wen, Ya
Qiao, Yutong
Lam, Chi Chiu
Brilakis, Ioannis
Lee, Sanghoon
Wong, Mun On
author_facet Wen, Ya
Qiao, Yutong
Lam, Chi Chiu
Brilakis, Ioannis
Lee, Sanghoon
Wong, Mun On
contents Inventory management of firefighting assets is crucial for emergency preparedness, risk assessment, and on-site fire response. However, conventional methods are inefficient due to limited capabilities in automated asset recognition and reconstruction. To address the challenge, this research introduces the Fire-ART dataset and develops a panoramic image-based reconstruction approach for semantic enrichment of firefighting assets into BIM models. The Fire-ART dataset covers 15 fundamental assets, comprising 2,626 images and 6,627 instances, making it an extensive and publicly accessible dataset for asset recognition. In addition, the reconstruction approach integrates modified cube-map conversion and radius-based spherical camera projection to enhance recognition and localization accuracy. Through validations with two real-world case studies, the proposed approach achieves F1-scores of 73% and 88% and localization errors of 0.620 and 0.428 meters, respectively. The Fire-ART dataset and the reconstruction approach offer valuable resources and robust technical solutions to enhance the accurate digital management of fire safety equipment.
format Preprint
id arxiv_https___arxiv_org_abs_2511_01399
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Semantic BIM enrichment for firefighting assets: Fire-ART dataset and panoramic image-based 3D reconstruction
Wen, Ya
Qiao, Yutong
Lam, Chi Chiu
Brilakis, Ioannis
Lee, Sanghoon
Wong, Mun On
Computer Vision and Pattern Recognition
Inventory management of firefighting assets is crucial for emergency preparedness, risk assessment, and on-site fire response. However, conventional methods are inefficient due to limited capabilities in automated asset recognition and reconstruction. To address the challenge, this research introduces the Fire-ART dataset and develops a panoramic image-based reconstruction approach for semantic enrichment of firefighting assets into BIM models. The Fire-ART dataset covers 15 fundamental assets, comprising 2,626 images and 6,627 instances, making it an extensive and publicly accessible dataset for asset recognition. In addition, the reconstruction approach integrates modified cube-map conversion and radius-based spherical camera projection to enhance recognition and localization accuracy. Through validations with two real-world case studies, the proposed approach achieves F1-scores of 73% and 88% and localization errors of 0.620 and 0.428 meters, respectively. The Fire-ART dataset and the reconstruction approach offer valuable resources and robust technical solutions to enhance the accurate digital management of fire safety equipment.
title Semantic BIM enrichment for firefighting assets: Fire-ART dataset and panoramic image-based 3D reconstruction
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.01399