Stochastic gradient boosting for urban change detection using multi-temporal LANDSAT-5TM in Yogyakarta, Indonesia

Q4 Environmental Science
Sintha Prima Widowati Gunawan, T. Matsui, T. Machimura
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引用次数: 0

Abstract

Despite available remote sensing data, technical challenges in developing countries have hindered local urban authorities from updating periodic land cover maps. Therefore, this study proposed a practical approach for regions with insufficient ground truth data. The study implemented a machine learning algorithm using single date medium spatial resolution data to build a classifier for separating Urban and Non-Urban zones. Then, the classifier was employed on multiple dates in 1999, 2005, and 2011 to corroborate its robustness. Results showed the stochastic gradient boosting (SGB) algorithm succeeded in building a robust classifier using the digital number value of LANDSAT-5TM 2005 with an overall accuracy of 0.76 and an area under curve receiver operator characteristic (AUC-ROC) value of 0.83. Moreover, the classifier predicted that urban areas in Yogyakarta, Indonesia, reached 24,099 (hectares) ha; 26,598 ha; and 22,650 ha in 1999, 2005, and 2011, respectively. The classifier's performance in predicting multiple datasets combined with histogram matching of medium spatial resolution data showed satisfactory results comparable to reference data from Statistics Indonesia, indicating sufficient accuracy for areal-integrated multi-temporal urbanization monitoring.
印度尼西亚日惹使用多时相LANDSAT-5TM进行城市变化检测的随机梯度增强
尽管有遥感数据,但发展中国家的技术挑战阻碍了地方城市当局定期更新土地覆盖图。因此,本研究为地面真值数据不足的地区提供了一种实用的方法。本研究利用单日期中空间分辨率数据实现了机器学习算法,构建了城市与非城市区域分离的分类器。然后,在1999年、2005年和2011年的多个数据上使用分类器来验证其稳健性。结果表明,随机梯度增强(SGB)算法利用LANDSAT-5TM 2005的数字值成功构建了鲁棒分类器,总体精度为0.76,曲线下接收算子特征面积(AUC-ROC)值为0.83。此外,分类器预测印度尼西亚日惹的市区面积达到24,099公顷;26598公顷;1999年、2005年和2011年分别为22650公顷。结合中空间分辨率数据的直方图匹配,该分类器对多数据集的预测效果与印度尼西亚统计局的参考数据相当,表明该分类器对区域一体化的多时相城市化监测具有足够的准确性。
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来源期刊
Asean Journal on Science and Technology for Development
Asean Journal on Science and Technology for Development Environmental Science-Waste Management and Disposal
CiteScore
1.50
自引率
0.00%
发文量
10
审稿时长
14 weeks
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