首页> 外文会议>IEEE International conference of Moroccan Geomatics >Geological mapping using Random Forests applied to Remote Sensing data: a demonstration study from Msaidira-Souk Al Had, Sidi Ifni inlier (Western Anti-Atlas, Morocco)
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Geological mapping using Random Forests applied to Remote Sensing data: a demonstration study from Msaidira-Souk Al Had, Sidi Ifni inlier (Western Anti-Atlas, Morocco)

机译:将随机森林应用于遥感数据的地质制图:来自Sidi Ifni inlier Msaidira-Souk Al Had的示范研究(摩洛哥西部反地图集)

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Geological mapping plays a very important role in the exploration of oil, mineral and water resources, as well as in identifying and monitoring natural hazards. It is an indispensable means for the economic development of the country. Remote sensing data provides critical support by reducing the costs and increasing the precision. This research work evaluates the use of Random Forests, a supervised machine learning algorithm, for geological mapping of the Msaidira-Souk Al Had region, a part of the sidi Ifni inlier situated in southern Morocco. By integrating the spectral and textural features of Sentinel-2A with the morphometric attributes of Digital Elevation Model (DEM) of ALOS/PALSAR. The experiment revealed that the overall accuracy reaches ≈ 91% while the kappa coefficient is 88%. As the final result of this research, the Random Forest method is an effective tool that geoscientists can use to produce a new map or to update existing geological maps.
机译:地质测绘在石油,矿产和水资源的勘探以及识别和监测自然灾害中发挥着非常重要的作用。这是该国经济发展必不可少的手段。遥感数据通过降低成本和提高精度提供了关键的支持。这项研究工作评估了有监督的机器学习算法随机森林在Msaidira-Souk Al Had地区(位于摩洛哥南部的西迪伊夫尼内里尔地区的一部分)的地质地图绘制中的使用。通过将Sentinel-2A的光谱和纹理特征与ALOS / PALSAR的数字高程模型(DEM)的形态特征相结合。实验表明,总体准确度达到≈91%,而卡伯系数为88%。作为这项研究的最终结果,随机森林法是地球科学家可以用来生成新地图或更新现有地质图的有效工具。

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