Implementing Support Vector Machine Algorithm for Early Slum Identification in Yogyakarta City, Indonesia Using Pleiades Images

P. Widayani, Achmad Fadilah, Irfan Zaki Irawan, K. Ghosh
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引用次数: 0

Abstract

Slums are one of the urban problems that continue to get the attention of the government and the city of Yogyakarta. Over time, cities continue to experience changes in land use due to population growth and migration. Therefore, it is necessary to monitor the existence of slums continuously. The objectives of this study are to conduct early identification of the slum using the Support Vector Machine (SVM) Algorithm, which is applied to the Pleiades Image in parts of Yogyakarta City, to test the accuracy of the slum mapping results generated from the SVM compared to the Slum Map of the KOTAKU Program. The data used are Pleiades Image, administrative maps, and existing slum maps of the KOTAKU Program, which are used to test the accuracy. The method used is Machine Learning with a Support Vector Machine Algorithm. The parameters used for early identification of the slums are the characteristics of the object (characteristics of buildings), settlement (density and shape), and the environment (location and its proximity to rivers and industries). We separate slum and non-slum based on texture, morphology, and spectral approaches. Based on the accuracy test results between the SVM classification results map of the slum and the map from the KOTAKU Program, the accuracy is 86.25% with a kappa coefficient of 0.796.
利用Pleiades影像在印尼日惹市实施支持向量机早期贫民窟辨识
贫民窟是日惹政府和市政府持续关注的城市问题之一。随着时间的推移,由于人口增长和移民,城市继续经历土地利用的变化。因此,有必要对贫民窟的存在进行持续的监测。本研究的目的是使用支持向量机(SVM)算法对贫民窟进行早期识别,并将其应用于日惹市部分地区的Pleiades图像,以测试支持向量机生成的贫民窟制图结果与KOTAKU计划的贫民窟地图的准确性。使用的数据是昴宿星团图像、行政地图和KOTAKU计划现有的贫民窟地图,用于测试准确性。使用的方法是支持向量机算法的机器学习。用于早期识别贫民窟的参数是对象的特征(建筑物的特征)、定居点(密度和形状)和环境(位置及其与河流和工业的接近程度)。我们根据纹理、形态和光谱方法来区分贫民窟和非贫民窟。基于SVM贫民窟分类结果图与KOTAKU Program地图的准确率测试结果,准确率为86.25%,kappa系数为0.796。
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来源期刊
CiteScore
0.10
自引率
0.00%
发文量
11
审稿时长
15 weeks
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