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Earthquake-Induced Building-Damage Mapping Using Explainable AI (XAI)

机译:使用可解释的AI(XAI)的地震诱导的建筑损坏映射

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摘要

Building-damage mapping using remote sensing images plays a critical role in providing quick and accurate information for the first responders after major earthquakes. In recent years, there has been an increasing interest in generating post-earthquake building-damage maps automatically using different artificial intelligence (AI)-based frameworks. These frameworks in this domain are promising, yet not reliable for several reasons, including but not limited to the site-specific design of the methods, the lack of transparency in the AI-model, the lack of quality in the labelled image, and the use of irrelevant descriptor features in building the AI-model. Using explainable AI (XAI) can lead us to gain insight into identifying these limitations and therefore, to modify the training dataset and the model accordingly. This paper proposes the use of SHAP (Shapley additive explanation) to interpret the outputs of a multilayer perceptron (MLP)—a machine learning model—and analyse the impact of each feature descriptor included in the model for building-damage assessment to examine the reliability of the model. In this study, a post-event satellite image from the 2018 Palu earthquake was used. The results show that MLP can classify the collapsed and non-collapsed buildings with an overall accuracy of 84% after removing the redundant features. Further, spectral features are found to be more important than texture features in distinguishing the collapsed and non-collapsed buildings. Finally, we argue that constructing an explainable model would help to understand the model’s decision to classify the buildings as collapsed and non-collapsed and open avenues to build a transferable AI model.
机译:使用遥感图像的建筑损坏映射在主要地震之后为第一个响应者提供快速和准确的信息来发挥关键作用。近年来,在使用不同的人工智能(AI)的框架,自动产生地震后建筑损坏地图的兴趣日益增长。这些领域的这些框架是有希望的,但由于几个原因,不可靠,包括但不限于方法的特定方法,缺乏AI模型的透明度,标记图像中的质量缺乏质量,以及在构建AI模型时使用无关描述符的使用。使用可解释的AI(XAI)可以引导我们深入了解识别这些限制,因此,相应地修改训练数据集和模型。本文提出了使用Shap(福利添加剂解释)来解释多层Perceptron(MLP)-A机器学习模型的输出 - 并分析模型中包括的每个特征描述符的影响,以检查可靠性模型。在这项研究中,使用了来自2018 Palu地震的事件后卫星图像。结果表明,MLP可以在去除冗余功能后的总精度为84%的折叠和非折叠建筑物。此外,发现光谱特征比区分折叠和非折叠建筑物的纹理特征更重要。最后,我们认为构建可解释的模型将有助于了解模型将建筑物分类为折叠和非折叠和开放的途径来构建可转让的AI模型。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者单位
  • 年(卷),期 2021(21),13
  • 年度 2021
  • 页码 4489
  • 总页数 22
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:建筑物损坏映射;特征分析;可解释AI;机器学习;遥感;
  • 入库时间 2022-08-21 12:34:38

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