使用深度学习分析无人机系统(UAS)图像、航空图像和卫星图像的住宅野火结构损伤检测

IF 2.4 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Dae Kun Kang, Michael J. Olsen, Erica Fischer, Jaehoon Jung
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引用次数: 0

摘要

近年来,民居火灾造成的经济和社会损失日益严重。先发制人的措施可以减少对公共基础设施的破坏,减轻这些影响。对火灾后的住宅结构进行快速评估对于调查总体损失范围和制定有效的减灾战略至关重要。然而,进行这些评估需要详细的现场检查,这需要大量的时间和人力。此外,这些定性评估可能是主观的,容易出错。为了克服这些缺点,本研究提出了一种实用的方法,利用深度学习技术对火灾后的房屋进行损害评估。深度学习在三种不同的住宅区图像源上的应用分析和比较如下:无人机系统图像、航空图像和卫星图像。值得注意的是,从训练阶段就考虑了这些图像源的组合,并全面研究了应用于每个图像源时训练数据变化的影响。关键结果揭示了可实现的精度取决于在训练和应用阶段使用的各种遥感数据源。该研究有望为从事野火研究的深度学习研究人员提供综合利用遥感数据的基础资源,并为野火救援人员的决策过程提供有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Residential Wildfire Structural Damage Detection Using Deep Learning to Analyze Uncrewed Aerial System (UAS) Imagery, Aerial Imagery, and Satellite Imagery

In recent years, wildfires in residential regions have increasingly inflicted significant economic and social losses. Preemptive measures can reduce the damage to public infrastructure and lessen these impacts. Rapid evaluation of residential structures after wildfire is crucial for investigating the overall scope of the damage and establishing an effective disaster mitigation strategy. However, conducting these assessments involves detailed on-site examinations, which require considerable time and workforce. Furthermore, these qualitative assessments can be subjective and prone to error. To overcome these shortcomings, this study suggests a practical methodology for performing damage assessments of housing after a wildfire using deep learning technology. The applications of deep learning to three different image sources for residential areas are analyzed and compared as follows: uncrewed aerial systems imagery, aerial imagery, and satellite imagery. Notably, combinations of these image sources were considered from the training stage, and the impact of changes in training data when applied to each image source was comprehensively investigated. Key results reveal achievable accuracies depending on the various remote sensing data sources used in the training and application phases. This study is expected to provide deep learning researchers working on wildfires with a fundamental resource for the comprehensive use of remote sensing data and to provide valuable insights into the decision-making process for wildfire responders.

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来源期刊
Fire and Materials
Fire and Materials 工程技术-材料科学:综合
CiteScore
4.60
自引率
5.30%
发文量
72
审稿时长
3 months
期刊介绍: Fire and Materials is an international journal for scientific and technological communications directed at the fire properties of materials and the products into which they are made. This covers all aspects of the polymer field and the end uses where polymers find application; the important developments in the fields of natural products - wood and cellulosics; non-polymeric materials - metals and ceramics; as well as the chemistry and industrial applications of fire retardant chemicals. Contributions will be particularly welcomed on heat release; properties of combustion products - smoke opacity, toxicity and corrosivity; modelling and testing.
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