基于地球观测和水文形态分析的农业洪水评估与监测中的机器学习技术

Lampros Tasiopoulos, M. Stefouli, Yorghos Voutos, Phivos Mylonas, E. Charou
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引用次数: 1

摘要

气候变化可能会增加极端和不利气象事件的频率,从而加剧农业平原的洪水。洪水范围图可成为农业用地决策者、风险管理和应急规划的宝贵信息来源。我们提出了一种结合各种类型数据和处理技术的方法,以获得准确的洪水范围图。该应用程序旨在通过基于免费提供的Sentinel-2 (S2)卫星图像和机器学习技术的自动地图估计方法,找到被洪水覆盖的农业用地的百分比。
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Machine Learning Techniques in Agricultural Flood Assessment and Monitoring Using Earth Observation and Hydromorphological Analysis
Climate change could exacerbate floods on agricultural plains by increasing the frequency of extreme and adverse meteorological events. Flood extent maps could be a valuable source of information for agricultural land decision makers, risk management and emergency planning. We propose a method that combines various types of data and processing techniques in order to achieve accurate flood extent maps. The application aims to find the percentage of agricultural land that is covered by the floods through an automatic map estimation methodology based on the freely available Sentinel-2 (S2) satellite images and machine learning techniques.
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