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SHAPE BASED CLASSIFICATION OF SEISMIC BUILDING STRUCTURAL TYPES

机译:基于形状的地震建筑结构类型分类

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This paper investigates automatic prediction of seismic building structural types described by the Global Earthquake Model (GEM) taxonomy, by combining remote sensing, cadastral and inspection data in a supervised machine learning approach. Our focus lies on the extraction of detailed geometric information from a point cloud gained by aerial laser scanning. To describe the geometric shape of a building we apply Shape-DNA, a spectral shape descriptor based on the eigenvalues of the Laplace-Beltrami operator. In a first experiment on synthetically generated building stock we succeed in predicting the roof type of different buildings with accuracies above 80?%, only relying on the Shape-DNA. The roof type of a building thereby serves as an example of a relevant feature for predicting GEM attributes, which cannot easily be identified and described by using traditional methods for shape analysis of buildings. Further research is necessary in order to explore the usability of Shape-DNA on real building data. In a second experiment we use real-world data of buildings located in the Groningen region in the Netherlands. Here we can automatically predict six GEM attributes, such as the type of lateral load resisting system, with accuracies above 75?% only by taking a buildings footprint area and year of construction into account.
机译:本文通过在有监督的机器学习方法中结合遥感,地籍和检查数据,研究了由全球地震模型(GEM)分类法描述的地震建筑结构类型的自动预测。我们的重点在于从通过空中激光扫描获得的点云中提取详细的几何信息。为了描述建筑物的几何形状,我们应用Shape-DNA,Shape-DNA是基于Laplace-Beltrami算子的特征值的光谱形状描述符。在合成建筑材料的第一个实验中,我们仅依靠Shape-DNA成功地预测了精度超过80%的不同建筑的屋顶类型。因此,建筑物的屋顶类型用作用于预测GEM属性的相关特征的示例,这些特征无法通过使用传统方法对建筑物进行形状分析来轻松识别和描述。为了探索Shape-DNA在实际建筑数据上的可用性,需要进行进一步的研究。在第二个实验中,我们使用位于荷兰格罗宁根地区的建筑物的真实数据。在这里,仅考虑建筑物的占地面积和建造年份,就可以自动预测6个GEM属性,例如侧向抗力系统的类型,其准确度超过75%。

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