基于sentinel-1 SAR和sentinel-2 MSI数据的埃塞俄比亚贡达尔市城市土地利用/土地覆被精确分类

Shimelis Sishah Dagne, Hurgesa Hundera Hirpha, Addisu Teshome Tekoye, Yeshambel Barko Dessie, Adane Addis Endeshaw
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摘要

有效的城市规划和管理依赖于精确的土地覆盖制图,这可以通过遥感数据和机器学习算法的结合来实现。本研究旨在探索和展示整合Sentinel-1 SAR和Sentinel-2 MSI卫星图像用于埃塞俄比亚贡达尔市城市土地覆盖分类的潜在效益。本研究利用了Sentinel-1A的合成孔径雷达(SAR)数据和Sentinel-2B的2023年多光谱仪器(MSI)数据。使用支持向量机(SVM)和随机森林(RF)机器学习算法进行分类。利用Google Earth Engine (GEE)对遥感数据进行处理、分类和验证。研究结果为使用不同数据集(即Sentinel 2B多光谱仪器(MSI)和Sentinel 1A合成孔径雷达(SAR)数据对支持向量机(SVM)和随机森林(RF)算法进行图像分类的性能评估提供了宝贵的见解。当应用于Sentinel 2B MSI数据集时,SVM和RF的总体精度(OA)均为0.69,Kappa评分为0.357,一致性中等。对于Sentinel 1A SAR数据,SVM保持了0.69的OA,但Kappa得分提高到了0.67,表明SVM适合SAR图像分类。相比之下,Sentinel 1A SAR数据的RF OA略低,为0.66。然而,当Sentinel 2B MSI和Sentinel 1A SAR数据集结合在一起时,SVM的OA达到了令人印象深刻的0.91,Kappa得分高达0.80,而RF的OA为0.81,Kappa得分为0.809。这些发现突出了融合来自多个来源的卫星数据以提高图像分类算法的准确性和有效性的潜力,使其成为各种应用的宝贵工具,包括土地利用制图和环境监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusion of sentinel-1 SAR and sentinel-2 MSI data for accurate Urban land use-land cover classification in Gondar City, Ethiopia
Effective urban planning and management rely on accurate land cover mapping, which can be achieved through the combination of remote sensing data and machine learning algorithms. This study aimed to explore and demonstrate the potential benefits of integrating Sentinel-1 SAR and Sentinel-2 MSI satellite imagery for urban land cover classification in Gondar city, Ethiopia. Synthetic Aperture Radar (SAR) data from Sentinel-1A and Multispectral Instrument (MSI) data from Sentinel-2B for the year 2023 were utilized for this research work. Support Vector Machine (SVM) and Random Forest (RF) machine learning algorithms were utilized for the classification process. Google Earth Engine (GEE) was used for the processing, classification, and validation of the remote sensing data. The findings of the research provided valuable insights into the performance evaluation of the Support Vector Machine (SVM) and Random Forest (RF) algorithms for image classification using different datasets, namely Sentinel 2B Multispectral Instrument (MSI) and Sentinel 1A Synthetic Aperture Radar (SAR) data. When applied to the Sentinel 2B MSI dataset, both SVM and RF achieved an overall accuracy (OA) of 0.69, with a moderate level of agreement indicated by the Kappa score of 0.357. For the Sentinel 1A SAR data, SVM maintained the same OA of 0.69 but showed an improved Kappa score of 0.67, indicating its suitability for SAR image classification. In contrast, RF achieved a slightly lower OA of 0.66 with Sentinel 1A SAR data. However, when the datasets of Sentinel 2B MSI and Sentinel 1A SAR were combined, SVM achieved an impressive OA of 0.91 with a high Kappa score of 0.80, while RF achieved an OA of 0.81 with a Kappa score of 0.809. These findings highlight the potential of fusing satellite data from multiple sources to enhance the accuracy and effectiveness of image classification algorithms, making them valuable tools for various applications, including land use mapping and environmental monitoring.
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