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Mapping sky, tree, and building view factors of street canyons in a high-density urban environment

机译:在高密度城市环境中绘制街道峡谷的天空,树木和建筑物景观因素

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View factors for sky, trees, and buildings are three important parameters of the urban outdoor environment that describe the geometrical relationship between different surfaces from the perspective of radiative energy transfer. This study develops an approach for accurately estimating sky view factor (SW), tree view factor (TVF), and building view factor (BVF) of street canyons in the high-density urban environment of Hong Kong using publicly available Google Street View (GSV) images and a deep-learning algorithm for extraction of street features (sky, trees, and buildings). As a result, SW, TVF, and BVF maps of street canyons are generated. Verification using reference data of hemispheric photography from field surveys in compact high-rise and low-rise areas shows that the GSV-based VF estimates have a satisfying agreement with the reference data (all with R-2 0.95), suggesting the effectiveness and high accuracy of the developed method. This is the first reported use of hemispheric photography for direct verification in a GSV-based streetscape study. Furthermore, a comparison between GSV-based and 3D-GIS-based SVFs shows that the two SW estimates are significantly correlated (R-2 = 0.40, p 0.01) and show better agreement in high-density areas. However, the latter overestimates SW by 0.11 on average, and the differences between them are significantly correlated with street trees (R-2 = 0.53): the more street trees, the larger the difference. This suggests that a lack of street trees in a 3D-GIS model of street environments is the dominant factor contributing to the large discrepancies between the two datasets.
机译:天空,树木和建筑物的视图因子是城市室外环境的三个重要参数,它们从辐射能传递的角度描述了不同表面之间的几何关系。这项研究开发了一种方法,可以使用公开可用的Google街景视图(GSV)准确估算香港高密度城市环境中街道峡谷的天空视野因子(SW),树状视图因子(TVF)和建筑物视野因子(BVF) )图片和用于提取街道特征(天空,树木和建筑物)的深度学习算法。结果,生成了街道峡谷的SW,TVF和BVF地图。使用紧凑的高层和低层区域中的野外调查的半球摄影参考数据进行的验证表明,基于GSV的VF估算值与参考数据具有令人满意的一致性(所有R-2> 0.95),表明了有效性和有效性。所开发方法的准确性很高。这是在基于GSV的街景研究中首次报道使用半球摄影技术进行直接验证。此外,对基于GSV和基于3D-GIS的SVF的比较表明,两个SW估计值具有显着相关性(R-2 = 0.40,p <0.01),并且在高密度区域显示出更好的一致性。但是,后者平均高估了SW 0.11,并且它们之间的差异与行道树显着相关(R-2 = 0.53):行道树越多,差异越大。这表明在街道环境的3D-GIS模型中缺少街道树木是导致两个数据集之间存在较大差异的主要因素。

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