基于高分辨率图像的建筑屋顶损伤分类

E. Gonsoroski, Y. Ahn, E. Harville, Nathaniel Countess, M. Lichtveld, K. Pan, L. Beitsch, S. Sherchan, C. Uejio
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引用次数: 0

摘要

飓风过后的损失评估往往既昂贵又耗时。遥感数据提供了一种补充性的数据收集方法,可以相对较快地以相对较低的成本完成。这项研究的重点是受飓风迈克尔(2018年)影响的佛罗里达州15个县,该飓风登陆时的风力为5级。本研究评估了收集的航空图像的能力,以经济有效地测量建筑物上的蓝色防水布对灾害影响和恢复的影响。支持向量机模型对蓝色防水布进行分类,并根据模型的预测对包裹进行损伤指示。该模型的总体准确率为85.3%,灵敏度为74%,特异性为96.7%。模型结果表明,研究区域约7%的地块(27926个住宅地块和4431个商业地块)存在蓝色篷布。研究结果可能有利于缺乏财政资源进行实地损害评估的司法管辖区。
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Classifying Building Roof Damage Using High Resolution Imagery for Disaster Recovery
Post-hurricane damage assessments are often costly and time-consuming. Remotely sensed data provides a complementary method of data collection that can be completed comparatively quickly and at relatively low cost. This study focuses on 15 Florida counties impacted by Hurricane Michael (2018), which had category 5 strength winds at landfall. The present study evaluates the ability of aerial imagery collected to cost-effectively measure blue tarps on buildings for disaster impact and recovery. A support vector machine model classified blue tarp, and parcels received a damage indicator based on the model's prediction. The model had an overall accuracy of 85.3% with a sensitivity of 74% and a specificity of 96.7%. The model results indicated approximately 7% of all parcels (27 926 residential and 4431 commercial parcels) in the study area as having blue tarp present. The study results may benefit jurisdictions that lacked financial resources to conduct on-the-ground damage assessments.
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