论文标题

foldingnet自动编码器模型,以创建CityGML构建数据集的地理空间分组

FoldingNet Autoencoder model to create a geospatial grouping of CityGML building dataset

论文作者

Verma, Deepank, Mumm, Olaf, Carlow, Vanessa Miriam

论文摘要

可解释的数值表示或其他复杂数据集的潜在信息更方便地分析和研究。这些表示有助于识别簇和离群值,评估相似的数据点,并探索和插值数据。三维(3D)建筑模型的数据集具有各种足迹形状,不同屋顶类型,墙壁,高度和体积的固有复杂性。传统上,分组类似的建筑物或3D形状需要将其已知属性和形状指标相匹配。但是,这需要获得大量此类属性才能计算相似性。相反,这项研究利用自动编码器以固定尺寸的向量形式计算形状信息,可以在距离指标的帮助下进行比较和分组。该研究使用“ Foldingnet” 3D自动编码器,从获得的LOD 2 CityGML数据集生成每栋建筑物的潜在表示。通过数据集重建,潜在的扩散可视化和分层聚类方法进一步分析从自动编码器获得的嵌入的功效。尽管群集对构建形式的类型提供了整体视角,但它们并未在聚类中包含地理空间信息。因此,创建一个地理空间模型,以迭代地在嵌入矢量中使用余弦相似性方法找到建筑物的地理组。德国联邦州勃兰登堡和柏林州以测试方法为例。该输出以语义拓扑簇和地理组的形式详细概述了构建形式。这种方法对复杂的分析是有益的,可扩展的,例如,在大型城市模拟中,城市形态学研究,能量分析或建筑库存的评估。

Explainable numerical representations or latent information of otherwise complex datasets are more convenient to analyze and study. These representations assist in identifying clusters and outliers, assess similar data points, and explore and interpolate data. Dataset of three-dimensional (3D) building models possesses inherent complexity in various footprint shapes, distinct roof types, walls, height, and volume. Traditionally, grouping similar buildings or 3D shapes requires matching their known properties and shape metrics with each other. However, this requires obtaining a plethora of such properties to calculate similarity. This study, in contrast, utilizes an autoencoder to compute the shape information in a fixed-size vector form that can be compared and grouped with the help of distance metrics. The study uses 'FoldingNet,' a 3D autoencoder, to generate the latent representation of each building from the obtained LoD 2 CityGML dataset. The efficacy of the embeddings obtained from the autoencoder is further analyzed by dataset reconstruction, latent spread visualization, and hierarchical clustering methods. While the clusters give an overall perspective of the type of build forms, they do not include geospatial information in the clustering. A geospatial model is therefore created to iteratively find the geographical groupings of buildings using cosine similarity approaches in embedding vectors. The German federal states of Brandenburg and Berlin are taken as an example to test the methodology. The output provides a detailed overview of the build forms in the form of semantic topological clusters and geographical groupings. This approach is beneficial and scalable for complex analytics, e.g., in large urban simulations, urban morphological studies, energy analysis, or evaluations of building stock.

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