利用共现矩阵从VHR图像中提取贫民窟

M. Kuffer, R. Sliuzas, K. Pfeffer, I. Baud
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引用次数: 10

摘要

发展中国家的许多城市缺乏关于高度活跃的贫民窟发展的出现和增长的详细信息。现有的统计数据往往汇集到大型行政单位,这些单位在有利于穷人的政策制定方面是异质的,在地理上相当没有意义。这种一般基础资料既不能对剥夺情况进行空间分类分析,也不容易监测住区动态,而贫民窟正在迅速发展,特别是在大城市。本文探讨了共存矩阵(GLCM)和NDVI在非常高空间和光谱分辨率卫星图像(即WorldView-2的8波段图像)中区分贫民窟和正式建成区的效用。在这项研究中,使用了印度孟买的东西横截面。我们采用图像分割方法提取同质城市斑块(HUPs),并将从GLCM中提取的信息进行聚合。使用收集的真实信息和视觉图像解译对结果进行评估。结果表明,GLCM结合NDVI的方差可以很好地区分正式建成区和贫民区(总体精度为86.7%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The utility of the co-occurrence matrix to extract slum areas from VHR imagery
Many cities in developing countries lack detailed information on the emergence and growth of highly dynamic slum developments. Available statistical data are often aggregated to large administrative units that are heterogeneous and geographically rather meaningless in terms of pro-poor policy development. Such general base information neither allows a spatially disaggregated analysis of deprivations nor are settlement dynamics easily monitored, while slums are rapidly developing in particular in megacities. This paper explores the utility of the co-occurrence matrix (GLCM) and NDVI to distinguish between slums and formal built-up areas in very high spatial and spectral resolution satellite imagery (i.e., 8-Band images of WorldView-2). For this study, an East-West cross-section of Mumbai in India was used. We employed image segmentation to extract homogenous urban patches (HUPs) for which the information extracted from the GLCM was aggregated. The result was evaluated using collected ground-truth information and visual image interpretation. The results showed that the variance of the GLCM combined with the NDVI separate formal built-up and slum areas very well (overall accuracy of 86.7%).
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