用遥感数据量化睡眠

J. Duque, Jorge E. Patiño, L. Ruiz, J. Pardo
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引用次数: 3

摘要

一个城市是否有贫民窟是贫穷的一个指标,研究人员和决策者对贫民窟的合理界定很感兴趣。来自调查和人口普查的社会经济数据是确定和量化城市或城镇内的贫民窟的主要信息来源。使用调查数据量化睡眠的一个问题是,这种类型的数据通常每十年收集一次,这是一个昂贵且耗时的过程。基于城市住区的物理外观是创造它的社会的反映这一前提,并基于居住在具有相似物理住房条件的城市地区的人们将具有相似的社会和人口特征的假设(Jain, 2008;Taubenb¨ock et al., 2009);本文使用哥伦比亚麦德林市的数据,仅使用来自正校正、泛化、自然彩色Quickbird场景的遥感数据来估计贫民窟指数。对于麦德林市来说,在分析区域层面上,粘土屋顶覆盖的百分比和平均游泳池密度可以解释高达59%的贫民窟指数变化。结构和质地度量有助于表征城市布局空间格局同质性的差异,并在考虑它们时提高统计模型的解释力。在不使用其他信息的情况下,它们可以解释高达30%的贫民窟指数变化。这项研究的结果令人鼓舞,许多研究人员、城市规划者和政策制定者可以从这种快速和低成本的方法中受益,以确定数据稀少或根本没有数据的城市中贫民窟的城市内部变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantifying Slumness with Remote Sensing Data
The presence of slums in a city is an indicator of poverty and its proper delimitation is a matter of interest for researchers and policy makers. Socio-economic data from surveys and censuses are the primary source of information to identify and quantify slumness within a city or a town. One problem of using survey data for quantifying slumness is that this type of data is usually collected every ten years and is an expensive and time consuming process. Based on the premise that the physical appearance of an urban settlement is a reflection of the society that created it and on the assumption that people living in urban areas with similar physical housing conditions will have similar social and demographic characteristics (Jain, 2008; Taubenb¨ock et al., 2009b); this paper uses data from Medellin City, Colombia, to estimate slum index using solely remote sensing data from an orthorectified, pan-sharpened, natural color Quickbird scene. For Medellin city, the percentage of clay roofs cover and the mean swimming pool density at the analytical region level can explain up to 59% of the variability in the slum index. Structure and texture measures are useful to characterize the differences in the homogeneity of the spatial pattern of the urban layout and they improve the explanatory power of the statistical models when taken into account. When no other information is used, they can explain up to 30% of the variability of the slum index. The results of this research are encouraging and many researchers, urban planners and policy makers could benefit from this rapid and low cost approach to characterize the intra-urban variations of slumness in cities with sparse data or no data at all.
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