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Automatic Mapping of Irrigated Areas in Mediteranean Context Using Landsat 8 Time Series Images and Random Forest Algorithm

机译:使用Landsat 8时间序列图像和随机森林算法自动绘制中世纪背景下的灌溉区域

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摘要

Groundwater withdrawals by farmers, in Morocco, are very numerous and informal. Therefore, the need for information on the location of irrigated areas is becoming increasingly important. Our main objective, in this study, is to evaluate the use of high-resolution Landsat 8 (L8) time series images and Random forest (RF) method to produce a land cover map with a sufficient precision to monitor the extension of irrigated areas. In the first part of this study, four parameters were evaluated: Number of trees, min split samples, max features and max depth. The results proves that the last parameter is the most important and has more impact on the oob score, which can reach 91 %. The second part of this study was devoted to reduce furthermore the number of features taken as input in the classification process. This was done through feature reduction then selection. The computational time was highly reduced and the best level of classification accuracy was reached by using only Landsat 8 (L8) time series images, statistics on the temporal spectral indices (NDVI, MNDWI) and Range texture.
机译:在摩洛哥,农民抽取的地下水非常多而且是非正式的。因此,对灌溉区域位置信息的需求变得越来越重要。在这项研究中,我们的主要目标是评估高分辨率Landsat 8(L8)时间序列图像和随机森林(RF)方法的使用,以产生足够精确的土地覆盖图来监控灌溉区域的扩展。在本研究的第一部分中,评估了四个参数:树木数量,最小分割样本,最大特征和最大深度。结果表明,最后一个参数是最重要的,并且对oob得分的影响更大,可以达到91%。本研究的第二部分致力于进一步减少在分类过程中用作输入的特征的数量。这是通过特征缩减然后选择来完成的。仅使用Landsat 8(L8)时间序列图像,时间光谱指数(NDVI,MNDWI)和范围纹理的统计信息,可大大减少计算时间并达到最佳分类精度。

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