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The use of Google Earth Engine and Geographical Detectors to monitor farmland changes in Fujian province

机译:利用谷歌地球引擎和地理探测器监测福建省农田变化

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Detailed information regarding the status and dynamics of farmlands is essential to protect food security, particularly for areas with a limited portion of farmlands like Fujian province. Since Fujian has a mountainous terrain and subtropical climate, it is challenging to acquire cloud-free remote sensing images to extract land information from remote sensing images. This study investigates the use of Google Earth Engine (GEE) to monitor farmland changes from remote sensing images, and Geographical Detectors to analyze the underlying driving factors in the Fujian province. We trained an online Deep Neural Network (DNN) model via Google Colaboratory, and then applied to it classify land-use types from Landsat images during 2000-2020 derived from the GEE platform. The obtained changes of land-use types were then inputted to Geographical Detectors, integrated with population, meteorological, and socio-economic data, to analyze their driving forces. The results showed that the proposed method produced land use maps at intervals of three years with higher overall accuracy (0.91±0.01). Based upon Geographical Detectors, we found that the farmland changes mainly caused by factors regarding elevation, population and slope, followed by factors of soil type, temperature and gross domestic product (GDP). We conclude that the GEE platform combined with deep learning models is of high potential to extract land cover and multi-temporal land use maps over large regions, and the Geographical Detectors are suitable for analyzing land changes using remote sensing derived products.
机译:关于农田状况和动态的详细信息对于保护粮食安全至关重要,特别是对于福建省等耕地面积有限的地区。福建是一个多山的地形和亚热带气候,获取无云遥感图像以从遥感图像中提取土地信息是一个挑战。本研究调查了使用谷歌地球引擎(GEE)从遥感图像监测农田变化,并使用地理探测器分析福建省的潜在驱动因素。我们通过Google Colaboratory训练了一个在线深度神经网络(DNN)模型,然后将其应用于从GEE平台获得的2000-2020年期间的陆地卫星图像中对土地利用类型进行分类。然后将获得的土地利用类型变化输入地理探测器,结合人口、气象和社会经济数据,分析其驱动力。结果表明,该方法每隔三年绘制一次土地利用图,总体精度较高(0.91±0.01)。基于地理探测器,我们发现耕地变化主要由海拔、人口和坡度等因素引起,其次是土壤类型、温度和国内生产总值(GDP)等因素。我们得出结论,GEE平台结合深度学习模型在提取大区域土地覆盖和多时相土地利用图方面具有很高的潜力,地理探测器适用于使用遥感衍生产品分析土地变化。

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