Determination of Urban Areas Using Google Earth Engine and Spectral Indices; Esenyurt Case Study

Zelal Kaya, A. Dervisoglu
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引用次数: 1

Abstract

Identifying impervious surfaces for monitoring urban expansion is important for the sustainable management of land resources and the protection of the environment. Remote sensing provides an important data source for urban land use/land cover mapping, and these data can be analyzed with various techniques for different purposes. If the aim is to extract information easily and rapidly, using spectral indices is the most appropriate solution, and there are many indices created for this purpose. The study carried out on the Google Earth Engine (GEE) platform, Esenyurt, the most populous district of Istanbul, was investigated using Sentinel 2 MSI image, with eight urban spectral indices and three vegetation indices. In addition, classification was made, and the results were evaluated. As a result of the urban index applications, it has been seen that the roofs are more or less mixed with the bare soil areas, and Normalized Difference Tillage Index (NDTI)gives the best results. Accuracy assessment is performed for index results and classification using the same points, and due to the urban area density in the application area, it is determined as 0.95% and 0.95% for NDTI and Normalized Difference Vegetation Index (NDVI), and 97% for classification, respectively. In GEE, a high (-0.79) negative correlation is observed between May mean values and 2007-2022 population data when the NDVI time series was applied to the entire area within the district borders using Landsat 5 and Landsat 8 images between 1990-2022. The rapidly increasing population in the district leads to rapid urbanization, and green areas are disappearing at the same rate.
利用Google Earth引擎和光谱指数确定城市面积Esenyurt案例研究
确定不透水地表以监测城市扩张对土地资源的可持续管理和环境保护具有重要意义。遥感为城市土地利用/土地覆盖制图提供了重要的数据来源,这些数据可以用不同的技术进行分析,用于不同的目的。如果目标是方便快速地提取信息,使用光谱索引是最合适的解决方案,并且为此目的创建了许多索引。在谷歌Earth Engine (GEE)平台上,对伊斯坦布尔人口最多的Esenyurt进行了研究,使用Sentinel 2 MSI图像进行了调查,其中包含8个城市光谱指数和3个植被指数。并对结果进行了分类和评价。通过城市指数的应用,发现屋顶或多或少与裸土区混合,以归一化差分耕作指数(NDTI)效果最好。利用相同的点对指数结果和分类进行精度评估,由于应用区域的城市面积密度,确定NDTI和归一化植被指数(NDVI)的精度分别为0.95%和0.95%,分类精度分别为97%。在GEE中,当使用1990-2022年期间的Landsat 5和Landsat 8图像将NDVI时间序列应用于区边界内的整个地区时,观测到5月平均值与2007-2022年人口数据之间存在高度负相关(-0.79)。该地区人口的快速增长导致了快速的城市化,绿地也在以同样的速度消失。
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