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首页> 外文期刊>Landscape and Urban Planning >Mapping urban growth using soil and vegetation index and landsat data: the Milan (Italy) city area case study.
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Mapping urban growth using soil and vegetation index and landsat data: the Milan (Italy) city area case study.

机译:使用土壤和植被指数以及Landat数据绘制城市增长图:米兰(意大利)城市案例研究。

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Remote sensing based on mid-resolution multi-spectral data has proven a powerful tool in urban areas study. This work introduces a novel methodology based on spectral indices ratios for mapping urban changes in terms of impervious surface expansion. At the methodological core, the Soil and Vegetation Index (SVI), a spectral index aimed at discriminating urban from non-urban land cover, has been utilized over Landsat TM-ETM+ satellite data. As a case study, the approach was applied to a multi-temporal dataset, with the aim of mapping the urban growth of Milan, Italy, during 20 years (1984-2003). The multi-step processing framework is composed of: SVI values derivation and normalization, multi-temporal SVI ratios thresholding for identifying urban growth area, and multiscale segmentation of urban change maps produced. Results analysis showed the feasibility of the approach and reliability of urban change maps derived, which reached a value of Overall Accuracy up to 80%, while multi-scale assessment of results revealed the 25 pixels segmentation scale as the optimal one for urban change detection using Landsat data over the study area.
机译:基于中分辨率多光谱数据的遥感已被证明是城市研究中的强大工具。这项工作介绍了一种基于光谱指数比率的新颖方法,可根据不透水的表面膨胀绘制城市变化图。作为方法学的核心,土壤和植被指数(SVI)是旨在区分市区和非城市土地覆盖的光谱指数,已用于Landsat TM-ETM +卫星数据。作为案例研究,该方法应用于多时间数据集,目的是绘制意大利米兰在20年(1984-2003年)内的城市增长图。多步骤处理框架包括:SVI值推导和归一化,用于识别城市增长区的多时间SVI比率阈值以及生成的城市变化图的多尺度分割。结果分析表明,该方法的可行性和导出的城市变化图的可靠性达到了80%的总体准确度,而对结果的多尺度评估表明,使用25像素分割尺度是使用城市变化检测的最佳选择研究区域内的Landsat数据。

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