微软建筑足迹应用程序 检测海啸对人类的影响

Andes Saragi, D. Mardiatno, Emma Hisbaron
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引用次数: 0

摘要

夜间发生的海啸事件更容易造成人员伤亡,因为人类都在住宅楼(房屋)中休息。本研究使用微软建筑足迹(MBF)提取住宅建筑,MBF 是应用人工智能技术的结果。本研究旨在利用 MBF 分析夜间暴露于海啸的人数。海啸建模采用贝里曼方法。从谷歌地球引擎提取的哨兵 2-A 图像。淹没模型分析结果显示,总淹没面积为 717 公顷,占总面积的 17.34%。对整个数据进行的 MBF 精确度分析结果显示,精确度为 99.02%,召回率为 98.40%,F1 分数为 98.71%。MBF 误差分析结果为假阳性 0.97%、假阴性 1.60%、联合交叉 0.12%。暴露的人数为 2,749 人,占总人口的 6.32%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Microsoft building footprint application To detect human exposure due to tsunami
Tsunami events at night are more prone to causing fatalities because humans are resting in residential buildings (houses). In this study, residential buildings were extracted using the Microsoft Building Footprint (MBF), which resulted from applying artificial intelligence technology. This study aims to analyze the number of people exposed to tsunamis at night using MBF. The tsunami modeling was carried out using the Berryman method. Sentinel 2-A Image extracted from Google Earth Engine. The results of the inundation modeling analysis show that the total inundated area is 717 Ha or 17.34% of the total area. The results of the MBF accuracy analysis on the entire data are a Precision of 99.02%, Recall of 98.40%, and F1 score of 98.71%. The results of the MBF error analysis are False Positive 0.97%, False Negative 1.60%, and Intersection of Union 0.12%. The number of people exposed is 2,749, or 6.32% of the total population.
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