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Machine Learning-Based Classification for Crop-Type Mapping Using the Fusion of High-Resolution Satellite Imagery in a Semiarid Area

机译:基于机器学习的分类,用于使用半干旱区域的高分辨率卫星图像融合的裁剪映射

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The monitoring of cultivated crops and the types of different land covers is a relevant environmental and economic issue for agricultural lands management and crop yield prediction. In this context, this paper aims to use and evaluate the contribution of multisensors classification based on machine learning classifiers to crop-type identification in a semiarid area of Morocco. It is a very heterogeneous zone characterized by mixed crops (tree crops with annual crops, same crop with different phenological states during the same agricultural season, crop rotation, etc.). Therefore, such heterogeneity made the crop-type discrimination more complicated. To overcome these challenges, the present work is the first study in this area which used the fusion of high spatiotemporal resolution Sentinel-1 and Sentinel-2 satellite images for land use and land cover mapping. Three machine learning classifier algorithms, artificial neural network (ANN), support vector machine (SVM), and maximum likelihood (ML), were applied to identify and map crop types in irrigated perimeter. In situ observations of the year 2018, for the R3 perimeter of Haouz plain in central Morocco, were used with satellite data of the same year to perform this work. The results showed that combined images acquired in C-band and the optical range improved clearly the crop-type classification performance (overall accuracy?=?89%; Kappa?=?0.85) compared to the classification results of optical or SAR data alone.
机译:培养作物的监测和不同土地覆盖的类型是农业土地管理和作物产量预测的相关环境和经济问题。在这种情况下,本文旨在利用和评估基于机器学习分类器的多传感器分类的贡献,以在摩洛哥的半干旱区域作物型识别。它是一个非常异质的区域,其特征在于混合作物(树木作物与年度作物,同样的作物在同一农业季节,作物旋转等)。因此,这种异质性使作物型辨别更加复杂。为了克服这些挑战,本工作是在这方面的其中使用的高时空分辨率的Sentinel-1和Sentinel-2卫星图像的融合土地使用和土地覆盖制图的首次研究。三种机器学习分类器算法,人工神经网络(ANN),支持向量机(SVM)和最大可能性(ML),用于识别和绘制灌溉周长的作物类型。原位观察2018年,对于摩洛哥中部的Haouz平原R3周长,与同年的卫星数据一起使用,以执行这项工作。结果表明,在C波段和光学范围中获得的组合图像显然提高了作物型分类性能(整体准确性?=?89%; Kappa?= 0.85)与单独的光学或SAR数据的分类结果相比。

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