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Continental-scale mapping and analysis of 3D building structure

机译:3D建筑结构的大陆尺度映射与分析

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Urban land use is often characterized based on the presence of built-up land, while the land use intensity of different locations is ignored. This narrow focus is at least partially due to a lack of data on the vertical dimension of urban land. The potential of Earth observation data to fill this gap has already been shown, but this has not yet been applied at large spatial scales. This study aims to map urban 3D building structure, i.e. building footprint, height, and volume, for Europe, the US, and China using random forest models. Our models perform well, as indicated by R-2 values of 0.90 for building footprint, 0.81 for building height, and 0.88 for building volume, for all three case regions combined. In our multidimensional input variables, we find that built-up density derived from the Global Urban Footprint (GUF) is the most important variable for estimating building footprint, while backscatter intensity of Synthetic Aperture Radar (SAR) is the most important variable for estimating building height. A combination of the two is essential to estimate building volume. Our analysis further highlights the heterogeneity of 3D building structure across space. Specifically, buildings in China tend to be taller on average (10.35 m) compared to Europe (7.37 m) and the US (6.69 m). At the same time, the building volume per capita in China is lowest, with 302.3 m(3) per capita, while Europe and the US show estimates of 404.6 m(3) and 565.4 m(3), respectively. The results of this study (3D building structure data for Europe, the US, and China) are publicly available, and can be used for further analysis of urban environment, spatial planning, and land use projections.
机译:城市土地使用往往基于建筑土地的存在,而不同地点的土地利用强度是忽视的。这种狭窄的焦点至少部分是由于城市土地垂直尺寸的数据缺乏数据。地球观测数据填补这种差距的可能性已经显示出来,但这尚未以大型空间尺度应用。本研究旨在使用随机森林模型来映射城市3D建筑结构,即建造欧洲,美国和中国的占地面积,高度和体积。我们的模型表现良好,如R-2值为0.90的建筑占地面积所示,建筑高度为0.81,为所有三种案例区域组合的建筑物容量为0.88。在我们的多维输入变量中,我们发现源自全球城市足迹(GUF)的内置密度是估算建筑足迹的最重要变量,而合成孔径雷达(SAR)的反向散射强度是估算建筑物最重要的变量高度。两者的组合对于估计建筑物容积至关重要。我们的分析进一步突出了空间3D建筑结构的异质性。具体而言,与欧洲(7.37米)和美国(6.69米)相比,中国的建筑物平均趋于更高(10.35米)。与此同时,中国人均建筑量最低,人均302.3米(3),欧洲和美国分别显示404.6米(3)和565.4米(3)的估计。本研究的结果(欧洲,美国和中国的3D建筑结构数据)是公开的,可用于进一步分析城市环境,空间规划和土地使用预测。

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