通过谷歌地球引擎评估各种机器学习算法对城市区域分类的准确性:阿富汗喀布尔市案例研究

Karimullah Ahmadi
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引用次数: 0

摘要

准确识别城市土地利用和土地覆盖(LULC)对于成功的城市规划和管理非常重要。尽管之前的研究已经探索了机器学习(ML)算法绘制城市土地利用和土地覆被图的能力,但确定在不同时间段和地点提取特定土地利用和土地覆被类别的最佳算法仍然是一项挑战。本研究在基于云的系统中采用了三种机器学习算法,通过 2023 年拍摄的 Landsat-8 和 Sentinel-2 卫星图像对喀布尔市的城市土地利用进行分类。谷歌地球引擎(GEE)中的机器学习算法是利用各种卫星数据生成准确、翔实的土地利用、土地利用变化(LULC)地图并呈现准确结果的最先进方法。这项研究的目的是通过分析 2023 年拍摄的哨兵卫星和大地卫星光学图像,评估各种机器学习技术(如随机森林(RF)、支持向量机(SVM)和分类与回归树(CART))在生成可靠的城市地区土地利用、土地利用变化(LULC)地图方面的精度和效率。城市区域被划分为五个等级:建成区、植被、裸地、土壤和水体。对所有三种算法的准确性和有效性进行了评估。RF 分类器对 Landsat-8 和 Sentinel-2 的总体准确率最高,分别为 93.99% 和 94.42%,而 SVM 和 CART 对 Landsat-8 和 Sentinel-2 的总体准确率较低,分别为 87.02% 和 81.12%,以及 91.52% 和 87.77%。本研究的结果表明,在使用 GEE 对 Landsat-8 和 Sentinel-2 进行城市地域分类和比较时,RF 的表现优于 SVM 和 CART。此外,本研究还强调了在选择一种算法之前对不同算法的性能进行比较的重要性,并表明同时使用多种方法可以得到最精确的地图。
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Assessment of the Accuracy of Various Machine Learning Algorithms for Classifying Urban Areas through Google Earth Engine: A Case Study of Kabul City, Afghanistan
Accurate identification of urban land use and land cover (LULC) is important for successful urban planning and management. Although previous studies have explored the capabilities of machine learning (ML) algorithms for mapping urban LULC, identifying the best algorithm for extracting specific LULC classes in different time periods and locations remains a challenge. In this research, three machine learning algorithms were employed on a cloud-based system to categorize urban land use of Kabul city through satellite images from Landsat-8 and Sentinel-2 taken in 2023. The most advanced method of generating accurate and informative LULC maps from various satellite data and presenting accurate outcomes is the machine learning algorithm in Google Earth Engine (GEE). The objective of the research was to assess the precision and efficiency of various machine learning techniques, such as random forest (RF), support vector machine (SVM), and classification and regression tree (CART), in producing dependable LULC maps for urban regions by analyzing optical satellite images of sentinel and Landsat taken in 2023. The urban area was divided into five classes: built-up area, vegetation, bare-land, soil, and water bodies. The accuracy and validation of all three algorithms were evaluated. The RF classifier showed the highest overall accuracy of 93.99% and 94.42% for Landsat-8 and Sentinel-2, respectively, while SVM and CART had lower overall accuracies of 87.02%, 81.12%, and 91.52%, 87.77%, with Landsat-8 and Sentinel-2, respectively. The results of the present study revealed that in this classification and comparison, RF performed better than SVM and CART for classifying urban territory for Landsat-8 and Sentinel-2 using GEE. Furthermore, the study highlights the importance of comparing the performance of different algorithms before selecting one and suggests that using multiple methods simultaneously can lead to the most precise map.
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