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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Object-based land covermapping and comprehensive feature calculation for an automated derivation of urban structure types at block level
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Object-based land covermapping and comprehensive feature calculation for an automated derivation of urban structure types at block level

机译:基于对象的土地覆盖图和综合特征计算,可自动推导街区级别的城市结构类型

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摘要

Cities have evolved under manifold geographical, economical, historical, and cultural criteria, resulting in various sizes and shapes. Each city exhibits individual features and unique characteristics, despite that structural similarities appear. The separation into individual patterns, commonly named urban structure types (USTs), supports the characterization of physical, functional, and energetic factors of settlement structures, enabling associated environmental and socio-economic investigations as well as the comparison between the patterns of different cities. This study presents an automated approach for the classification of USTs based on remote sensing data in order to analyze the links between settlement structures and environmental issues, such as air pollution or urban heat islands, in a later stage of the project. Initially, an object-based classification routine is implemented to identify the land cover for the city of Berlin, utilizing spatially very high resolution aerial images and object height information. UST classes are defined based on the occurrence within the study area and are delimited by block boundaries. Afterwards, indicators for the derivation of USTs are generated based on the previously derived land cover information and themost valuable features are selectedwith the help of RandomForests. Finally, structural units are classified, involving common and new land cover based parameters. The focus is on the generation of an automated and transferable routine for a comprehensive UST classification covering the entire city. Comparing the results with reference data, good classification accuracies for both land cover and USTs indicate the suitability of the proposed method.
机译:城市是在多种地理,经济,历史和文化条件下发展的,从而形成各种规模和形状。尽管出现结构上的相似性,每个城市仍展现出各自的特征和独特的特征。分离为个人模式,通常称为城市结构类型(USTs),支持定居结构的物理,功能和能量因素的表征,从而实现相关的环境和社会经济调查以及不同城市模式之间的比较。这项研究提出了一种基于遥感数据的UST分类自动方法,以便在项目后期分析定居结构与环境问题(如空气污染或城市热岛)之间的联系。最初,实施基于对象的分类例程,以利用空间非常高分辨率的航空图像和对象高度信息来识别柏林市的土地覆盖。 UST类是根据研究区域内的事件定义的,并由块边界界定。然后,根据先前得出的土地覆盖信息生成UST的衍生指标,并在RandomForests的帮助下选择最有价值的特征。最后,对结构单元进行分类,包括基于通用和新土地覆盖的参数。重点是针对整个城市的全面UST分类生成自动且可转移的例程。将结果与参考数据进行比较,土地覆被和UST的良好分类精度表明了该方法的适用性。

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