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Mapping global urban areas using MODIS 500-m data: New methods and datasets based on 'urban ecoregions'

机译:使用MODIS 500-m数据绘制全球市区图:基于“城市生态区”的新方法和数据集

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摘要

Although cities, towns and settlements cover only a tiny fraction (<1%) of the world's surface, urban areas are the nexus of human activity with more than 50% of the population and 70-90% of economic activity. As such, material and energy consumption, air pollution, and expanding impervious surface are all concentrated in urban areas, with important environmental implications at local, regional and potentially global scales. New ways to measure and monitor the built environment over large areas are thus critical to answering a wide range of environmental research questions related to the role of urbanization in climate, biogeochemistry and hydrological cycles. This paper presents a new dataset depicting global urban land at 500-m spatial resolution based on MODIS data (available at http://sage.wisc.edu/urbanenvironment.html). The methodological approach exploits temporal and spectral information in one year of MODIS observations, classified using a global training database and an ensemble decision-tree classification algorithm. To overcome confusion between urban and built-up lands and other land cover types, a stratification based on climate, vegetation, and urban topology was developed that allowed region-specific processing. Using reference data from a sample of 140 cities stratified by region, population size, and level of economic development, results show a mean overall accuracy of 93% (k=0.65) at the pixel level and a high level of agreement at the city scale (R~2=0.90).
机译:尽管城市,城镇和居民点仅占世界表面的一小部分(<1%),但城市地区却是人类活动的纽带,人口超过50%,经济活动占70-90%。因此,材料和能源消耗,空气污染以及不透水表面的扩大都集中在城市地区,在地方,区域和潜在的全球范围内都具有重要的环境影响。因此,测量和监测大面积建筑环境的新方法对于回答与城市化在气候,生物地球化学和水文循环中的作用有关的各种环境研究问题至关重要。本文提出了一个新的数据集,该数据集基于MODIS数据(可从http://sage.wisc.edu/urbanenvironment.html获得),以500米的空间分辨率描述全球城市土地。该方法论方法利用MODIS观测值中的时间和频谱信息,使用全球训练数据库和整体决策树分类算法对其进行分类。为了克服城市土地和已建成土地以及其他土地覆盖类型之间的混淆,开发了基于气候,植被和城市拓扑结构的分层方法,允许对特定区域进行处理。使用按地区,人口规模和经济发展水平分层的140个城市样本的参考数据,结果显示像素级的平均总体准确度为93%(k = 0.65),城市规模的一致性较高(R〜2 = 0.90)。

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