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首页> 外文期刊>Canadian Journal of Remote Sensing >Utilizing Sentinel-1A Radar Images for Large-Area Land Cover Mapping with Machine-learning Methods
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Utilizing Sentinel-1A Radar Images for Large-Area Land Cover Mapping with Machine-learning Methods

机译:利用机器学习方法利用Sentinel-1A雷达图像进行大面积陆地覆盖映射

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摘要

Land use and land cover maps are vital sources of information for many applications. Recently, using high-resolution and open-access satellite images has become a preferred method for mapping land cover, especially over large areas. This study was designed to map the land cover and agricultural fields of a large area using Sentinel-1A synthetic aperture radar (SAR) images. Seven machine-learning methods were employed for image analyses. The Random Forest classifier algorithm outperformed the other machine-learning methods in the training step; thus, we selected it for further use and tuned its parameters. After several image processing steps, we classified the final image into 23 land cover classes and achieved an overall accuracy of 42% for all classes, and 57% for agricultural fields. This research note highlights some characteristics and advantages of using Sentinel-1A images and provides novel methods for nation-wide large-area mapping applications.
机译:土地使用和陆地覆盖地图是许多应用程序的重要信息来源。最近,使用高分辨率和开放式卫星图像已成为绘制陆地覆盖的首选方法,尤其是在大区域上。本研究旨在使用Sentinel-1A合成孔径雷达(SAR)图像映射大面积的陆地覆盖和农业领域。用于图像分析的7种机器学习方法。随机林分类器算法在训练步骤中优于其他机器学习方法;因此,我们选择了它以进一步使用并调整其参数。经过几个图像处理步骤后,我们将最终图像分为23个陆地覆盖课程,并为所有课程实现了42%的整体准确性,以及农业领域的57%。该研究说明突出了使用Sentinel-1A图像的一些特征和优点,并为全国范围的大面积映射应用提供了新颖的方法。

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