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Improved estimation of aboveground biomass in wheat from RGB imagery and point cloud data acquired with a low-cost unmanned aerial vehicle system

机译:通过低成本的无人机系统获取的RGB图像和点云数据改进了小麦地上生物量的估算

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摘要

BackgroundAboveground biomass (AGB) is a widely used agronomic parameter for characterizing crop growth status and predicting grain yield. The rapid and accurate estimation of AGB in a non-destructive way is useful for making informed decisions on precision crop management. Previous studies have investigated vegetation indices (VIs) and canopy height metrics derived from Unmanned Aerial Vehicle (UAV) data to estimate the AGB of various crops. However, the input variables were derived either from one type of data or from different sensors on board UAVs. Whether the combination of VIs and canopy height metrics derived from a single low-cost UAV system can improve the AGB estimation accuracy remains unclear. This study used a low-cost UAV system to acquire imagery at 30 m flight altitude at critical growth stages of wheat in Rugao of eastern China. The experiments were conducted in 2016 and 2017 and involved 36 field plots representing variations in cultivar, nitrogen fertilization level and sowing density. We evaluated the performance of VIs, canopy height metrics and their combination for AGB estimation in wheat with the stepwise multiple linear regression (SMLR) and three types of machine learning algorithms (support vector regression, SVR; extreme learning machine, ELM; random forest, RF).
机译:背景技术地上生物量(AGB)是一种广泛使用的农学参数,用于表征作物生长状况和预测谷物产量。以无损方式快速而准确地估算AGB,对于做出精确的作物管理决策至关重要。先前的研究已经调查了从无人机(UAV)数据得出的植被指数(VIs)和冠层高度度量,以估计各种作物的AGB。但是,输入变量是从一种类型的数据或从车载UAV的不同传感器中得出的。从单个低成本无人机系统获得的VI和机盖高度度量标准的组合是否可以提高AGB估计精度,目前尚不清楚。这项研究使用低成本的无人机系统在中国东部如uga的小麦关键生长阶段在30 m飞行高度获取图像。该实验于2016年和2017年进行,涉及36个田间田地,分别代表了品种,氮肥水平和播种密度的变化。我们使用逐步多元线性回归(SMLR)和三种类型的机器学习算法(支持向量回归,SVR,极限学习机,ELM,随机森林, RF)。

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