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Transferability of Object-Oriented Image Analysis Methods for Slum Identification

机译:面向对象的贫民窟识别图像分析方法的可传递性

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Updated spatial information on the dynamics of slums can be helpful to measure and evaluate progress of policies. Earlier studies have shown that semi-automatic detection of slums using remote sensing can be challenging considering the large variability in definition and appearance. In this study, we explored the potential of an object-oriented image analysis (OOA) method to detect slums, using very high resolution (VHR) imagery. This method integrated expert knowledge in the form of a local slum ontology. A set of image-based parameters was identified that was used for differentiating slums from non-slum areas in an OOA environment. The method was implemented on three subsets of the city of Ahmedabad, India. Results show that textural features such as entropy and contrast derived from a grey level co-occurrence matrix (GLCM) and the size of image segments are stable parameters for classification of built-up areas and the identification of slums. Relation with classified slum objects, in terms of enclosed by slums and relative border with slums was used to refine classification. The analysis on three different subsets showed final accuracies ranging from 47% to 68%. We conclude that our method produces useful results as it allows including location specific adaptation, whereas generically applicable rulesets for slums are still to be developed.
机译:关于贫民窟动态的最新空间信息可能有助于衡量和评估政策进展。较早的研究表明,考虑到定义和外观的巨大差异,使用遥感对贫民窟进行半自动检测可能具有挑战性。在这项研究中,我们探索了使用超高分辨率(VHR)图像的面向对象图像分析(OOA)方法检测贫民窟的潜力。这种方法以局部贫民窟本体的形式集成了专家知识。确定了一组基于图像的参数,这些参数用于在OOA环境中将贫民窟与非贫民窟地区区分开。该方法在印度艾哈迈达巴德市的三个子集中实施。结果表明,从灰度共生矩阵(GLCM)得出的熵和对比度之类的纹理特征以及图像段的大小是用于建筑物区域分类和贫民窟识别的稳定参数。根据贫民窟所包围的地区和与贫民窟的相对边界,与已分类的贫民窟对象之间的关系被用于细化分类。对三个不同子集的分析显示最终准确度为47%至68%。我们得出的结论是,我们的方法产生了有益的结果,因为它允许包括针对特定地点的适应,而针对贫民窟的普遍适用规则集仍有待开发。

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