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Quantifying Urban Sprawl with Spatial Autocorrelation Techniques using Multi-Temporal Satellite Data

机译:使用多时相卫星数据的空间自相关技术量化城市扩张

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摘要

This study deals with the use of satellite TM multi-temporal data coupledwith statistical analyses to quantitatively estimate urban expansion and soil consumption for small towns in southern Italy. The investigated area is close to Bari and was selected because highly representative for Italian urban areas. To cope with the fact that small changes have to be captured and extracted from TM multi-temporal data sets, we adopted the use of spectral indices to emphasize occurring changes, and geospatial data analysis to reveal spatial patterns. Analyses have been carried out using global and local spatial autocorrelation, applied to multi-date NASA Landsat images acquired in 1999 and 2009 and available free of charge. Moreover, in this paper each step ofdata processing has been carried out using free or open source software tools, such as, operating system (Linux Ubuntu). GIS software (GRASS CIS and Quantum G1S) and software for statistical analysis of data (R). This aspect is very important, since itputs no limits and allows everybody to carry out spatial analyses on remote sensing data. This approach can be very useful to assess and map land cover change and soil degradation, even for small urbanized areas, as in the case of Italy, where recently an increasing number of devastating flash floods have been recorded. These events have been mainly linked to urban expansion and soil consumption and have caused loss of human lives along with enormous damages to urban settlements, bridges, roads, agricultural activities, etc. In these cases, remote sensing can provide reliable operational low cost tools to assess, quantify and map risk areas.
机译:这项研究涉及使用卫星TM多时相数据和统计分析来定量估计意大利南部小城镇的城市扩张和土壤消耗。被调查区域靠近巴里(Bari),因此被选中是因为它在意大利城市地区具有很高的代表性。为了应对必须从TM多时相数据集中捕获和提取小的变化这一事实,我们采用了频谱指数来强调发生的变化,并采用了地理空间数据分析来揭示空间格局。已经使用全局和局部空间自相关进行了分析,并将其应用于1999年和2009年获得的免费的多日期NASA Landsat图像。而且,在本文中,数据处理的每个步骤都使用免费或开源软件工具(例如,操作系统(Linux Ubuntu))执行。 GIS软件(GRASS CIS和Quantum G1S)和用于数据统计分析的软件(R)。这方面非常重要,因为它不受限制,并允许每个人对遥感数据进行空间分析。这种方法对于评估和绘制土地覆被变化和土壤退化情况非常有用,即使是在小规模的城市化地区也是如此,例如在意大利,最近已记录了越来越多的毁灭性山洪。这些事件主要与城市扩张和土壤消耗有关,已造成人员丧生,并对城市住区,桥梁,道路,农业活动等造成了巨大破坏。在这些情况下,遥感技术可以提供可靠的运营低成本工具,评估,量化和绘制风险区域。

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