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Crop type mapping using LiDAR, Sentinel-2 and aerial imagery with machine learning algorithms

机译:使用LIDAR,Sentinel-2和带有机器学习算法的空中图像的作物类型映射

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LiDAR data are becoming increasingly available, which has opened up many new applications. One such application is crop type mapping. Accurate crop type maps are critical for monitoring water use, estimating harvests and in precision agriculture. The traditional approach to obtaining maps of cultivated fields is by manually digitizing the fields from satellite or aerial imagery and then assigning crop type labels to each field – often informed by data collected during ground and aerial surveys. However, manual digitizing and labeling is time-consuming, expensive and subject to human error. Automated remote sensing methods is a cost-effective alternative, with machine learning gaining popularity for classifying crop types. This study evaluated the use of LiDAR data, Sentinel-2 imagery, aerial imagery and machine learning for differentiating five crop types in an intensively cultivated area. Different combinations of the three datasets were evaluated along with ten machine learning. The classification results were interpreted by comparing overall accuracies, kappa, standard deviation and f-score. It was found that LiDAR data successfully differentiated between different crop types, with XGBoost providing the highest overall accuracy of 87.8%. Furthermore, the crop type maps produced using the LiDAR data were in general agreement with those obtained by using Sentinel-2 data, with LiDAR obtaining a mean overall accuracy of 84.3% and Sentinel-2 a mean overall accuracy of 83.6%. However, the combination of all three datasets proved to be the most effective at differentiating between the crop types, with RF providing the highest overall accuracy of 94.4%. These findings provide a foundation for selecting the appropriate combination of remotely sensed data sources and machine learning algorithms for operational crop type mapping.
机译:LIDAR数据越来越多地提供,已开辟了许多新应用程序。一个这样的应用是裁剪类型映射。准确的作物类型地图对于监测水使用,估算收获以及精密农业来说至关重要。获得耕地地图的传统方法是手动向卫星或空中图像的字段数字化,然后将作物类型标签分配给每个字段 - 通常通过在地面和空中调查期间收集的数据通知。但是,手动数字化和标签是耗时,昂贵的并且受人类错误的影响。自动遥感方法是一种经济高效的替代方案,机器学习获得频繁的分类作物类型。本研究评估了LIDAR数据,Sentinel-2图像,空中图像和机器学习的使用,以区分五种作物在集中耕地区域。随着十种机器学习评估了三个数据集的不同组合。通过比较整体精度,κ,标准偏差和F分数来解释分类结果。结果发现,LIDAR数据在不同作物类型之间成功区分,XGBoost提供了87.8%的最高总精度。此外,使用LIDAR数据产生的作物类型地图与通过使用哨兵-2数据获得的那些达成一致,LIDAR获得84.3%的平均整体精度和哨子-2的平均总精度为83.6%。然而,所有三个数据集的组合被证明是最有效的分化在作物类型之间,RF提供94.4%的最高总精度。这些发现提供了选择用于操作庄稼类型映射的遥感数据源和机器学习算法的适当组合的基础。

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