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MAPPING IRRIGATED AREAS USING RANDOM FOREST BASED ON GF-1 MULTI-SPECTRAL DATA

机译:基于GF-1多光谱数据的随机林映射灌溉区域

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The irrigation districts need high-resolution spatial distribution information of irrigated fields to manage irrigation water effectively and achieve sustainable water resources management, especially for fragmented croplands such as China. However, most irrigated area mapping methods by remote sensing are based on MODIS time series with a relatively low resolution of 250–1000 m. To fill this gap, this study attempted to use pixel-based random forest to map irrigated areas based on two multi-spectral images from GF-1 satellite with a resolution of 16 m in an irrigated district of China, during the winter-spring irrigation period of 2018. Accuracy of the retrieved 16-m map was assessed by accuracy error matrix using 210 ground-truth samples. The result had an overall accuracy of 93.33% with a Kappa Coefficient of 0.9164. The 16-m resulting map shows that the area of irrigated wheat, rain-fed wheat, irrigated fruit tree, and fallow croplands in the study area were 52066.48 ha, 12932.33 ha, 18104.32 ha, and 4641.25 ha respectively, accounting for 52.57%, 13.06%, 18.28% and 4.69% of the total study area, which are basically consistent with those obtained from field investigations. Compared with SVM, the random forest results are more accurate with fewer misclassifications. The pixel-based random forest for irrigated area mapping at high resolution can obtain more refined spatial distribution of irrigated areas than low-resolution images, which is suitable for fragmented croplands. Besides, this method can effectively distinguish irrigated crops from rain-fed crops, proving the classification ability of random forest in high-resolution irrigation area mapping only by two images.
机译:灌溉区需要灌溉领域的高分辨率空间分布信息,以有效地管理灌溉水,实现可持续水资源管理,特别是对于中国等分散的农作物。然而,通过遥感的大多数灌溉区域映射方法基于MODIS时间序列,其分辨率为250-1000米。为了填补这种差距,本研究试图使用基于像素的随机林来根据来自GF-1卫星的两种多光谱图像来映射灌溉区域,在冬季春季灌溉期间,在中国的灌溉区分辨率为16米。 2018年期间。通过使用210个地面样本的精度误差矩阵评估检索到的16-M映射的准确性。该结果的总精度为93.33%,Kappa系数为0.9164。 16-M结果地图显示,灌溉小麦,雨喂养小麦,灌溉果树和研究面积的休耕地区分别为52066.48公顷,12932.33公顷,18104.32公顷和4641.25公顷,占52.57%,总研究区域的13.06%,18.28%和4.69%,与从现场调查中获得的人数基本一致。与SVM相比,随机森林结果更准确,错误分类较少。用于高分辨率的灌溉区域映射的基于像素的随机森林可以获得比低分辨率图像更精细的灌溉区域的空间分布,这适用于碎片的农作物。此外,这种方法可以有效地区分灌溉作物的灌溉作物,从而证明了随意灌溉区域绘制的随机林的分类能力仅有两个图像。

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