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An automatic method for weed mapping in oat fields based on UAV imagery

机译:基于UAV Imagerery的OAT字段中杂草映射的自动方法

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The accurate detection and treatment of weeds in agricultural fields is a necessary procedure for managing crop yield and avoiding herbicide pollution. With the emergence of unmanned aerial vehicles (UAV), the ability to acquire spatial data at the desired spatial and temporal resolution became available, and the resulting input data met high standards for weed management. In this paper, we tested four independent classification algorithms for the creation of weed maps, combining automatic and manual methods, as well as object-based and pixel-based classification approaches, which were used separately on two subsets. Input UAV data were collected using a low-cost RGB camera due to its affordability compared to multispectral cameras. Classification algorithms were based on the random forest machine learning algorithm for weed and bare soil extraction, following an unsupervised classification with the K-means algorithm for further estimation of weeds and bare soil presence in non-weed and non-soil areas. Of the four classification algorithms tested, the automatic object-based classification method achieved the highest classification accuracy, resulting in an overall accuracy of 89.0% for subset A and 87.1% for subset B. Automatic classification methods were robustly developed, using at least 0.25% of the scene size as the training data set in all circumstances anticipated for the random forest classification algorithm to operate. The use of the algorithm resulted in weed maps consisting of zoned classes and covering areas with similar biological properties, making them ready for use as inputs in weed treatments that use agricultural machinery.
机译:农业领域中杂草的准确检测和治疗是管理作物产量和避免除草剂污染的必要程序。随着无人驾驶飞行器(UAV)的出现,可以在所需的空间和时间分辨率下获得空间数据的能力,并且产生的输入数据符合杂草管理的高标准。在本文中,我们测试了四个独立的分类算法,用于创建杂草地图,组合自动和手动方法,以及基于对象和基于像素的分类方法,它们在两个子集上单独使用。由于其与多光谱相机相比,使用低成本RGB相机收集输入的UAV数据。随着K-MEAS算法的无监督分类,在非杂草和非土壤区域进一步估计杂草和裸土壤存在之后,对杂草和裸机提取的随机林机械学习算法基于杂草和裸机提取的随机林机器学习算法。在测试的四种分类算法中,基于自动对象的分类方法实现了最高分类精度,总精度为89.0%的子集A和子集B的87.1%。自动分类方法稳健地开发,使用至少0.25%作为培训数据在所有情况下设置的场景大小,预计随机林分类算法运行。算法的使用导致杂草地图由分区组成和具有相似生物特性的覆盖区域,使它们可以用作使用农业机械的杂草治疗的投入。

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