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A Pattern-Based Definition of Urban Context Using Remote Sensing and GIS

机译:基于模式的遥感和GIS定义城市背景

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摘要

In Sub-Saharan Africa rapid urban growth combined with rising poverty is creating diverse urban environments, the nature of which are not adequately captured by a simple urban-rural dichotomy. This paper proposes an alternative classification scheme for urban mapping based on a gradient approach for the southern portion of the West African country of Ghana. Landsat Enhanced Thematic Mapper Plus (ETM+) and European Remote Sensing Satellite-2 (ERS-2) synthetic aperture radar (SAR) imagery are used to generate a pattern based definition of the urban context. Spectral mixture analysis (SMA) is used to classify a Landsat scene into Built, Vegetation and Other land covers. Landscape metrics are estimated for Built and Vegetation land covers for a 450 meter uniform grid covering the study area. A measure of texture is extracted from the SAR imagery and classified as Built/Non-built. SMA based measures of Built and Vegetation fragmentation are combined with SAR texture based Built/Non-built maps through a decision tree classifier to generate a nine class urban context map capturing the transition from unsettled land at one end of the gradient to the compact urban core at the other end. Training and testing of the decision tree classifier was done using very high spatial resolution reference imagery from Google Earth. An overall classification agreement of 77% was determined for the nine-class urban context map, with user’s accuracy (commission errors) being lower than producer’s accuracy (omission errors). Nine urban contexts were classified and then compared with data from the 2000 Census of Ghana. Results suggest that the urban classes appropriately differentiate areas along the urban gradient.
机译:在撒哈拉以南非洲,城市的快速发展与贫困的加剧正在创造出多样化的城市环境,简单的城乡二分法并不能充分地体现其性质。本文针对西非国家加纳的南部地区,提出了一种基于梯度方法的城市地图替代分类方案。 Landsat增强主题地图制作工具(ETM +)和欧洲遥感卫星2(ERS-2)合成孔径雷达(SAR)图像用于生成基于模式的城市环境定义。光谱混合分析(SMA)用于将Landsat场景分类为“已建”,“植被”和“其他土地覆盖”。对于覆盖研究区域的450米均匀网格,估计了建筑物和植被土地覆盖的景观指标。从SAR图像中提取纹理量度,并将其分类为“内置” /“非内置”。通过决策树分类器,将基于SMA的建筑物和植被碎片测量与基于SAR纹理的建筑物/非建筑物地图相结合,以生成九类城市环境地图,以捕获从坡度一端未定居地到紧凑型城市核心的过渡在另一端。决策树分类器的训练和测试是使用来自Google Earth的非常高的空间分辨率参考图像完成的。九类城市环境地图的总体分类协议确定为77%,用户的准确度(佣金误差)低于生产者的准确性(遗漏误差)。对九种城市环境进行了分类,然后与2000年加纳人口普查数据进行了比较。结果表明,城市阶级适当地区分了沿城市梯度的区域。

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