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Estimation of Crop Growth Parameters Using UAV-Based Hyperspectral Remote Sensing Data

机译:利用基于无人机的高光谱遥感数据估算作物生长参数

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摘要

Above-ground biomass (AGB) and the leaf area index (LAI) are important indicators for the assessment of crop growth, and are therefore important for agricultural management. Although improvements have been made in the monitoring of crop growth parameters using ground- and satellite-based sensors, the application of these technologies is limited by imaging difficulties, complex data processing, and low spatial resolution. Therefore, this study evaluated the use of hyperspectral indices, red-edge parameters, and their combination to estimate and map the distributions of AGB and LAI for various growth stages of winter wheat. A hyperspectral sensor mounted on an unmanned aerial vehicle was used to obtain vegetation indices and red-edge parameters, and stepwise regression (SWR) and partial least squares regression (PLSR) methods were used to accurately estimate the AGB and LAI based on these vegetation indices, red-edge parameters, and their combination. The results show that: (i) most of the studied vegetation indices and red-edge parameters are significantly highly correlated with AGB and LAI; (ii) overall, the correlations between vegetation indices and AGB and LAI, respectively, are stronger than those between red-edge parameters and AGB and LAI, respectively; (iii) Compared with the estimations using only vegetation indices or red-edge parameters, the estimation of AGB and LAI using a combination of vegetation indices and red-edge parameters is more accurate; and (iv) The estimations of AGB and LAI obtained using the PLSR method are superior to those obtained using the SWR method. Therefore, combining vegetation indices with red-edge parameters and using the PLSR method can improve the estimation of AGB and LAI.
机译:地上生物量(AGB)和叶面积指数(LAI)是评估作物生长的重要指标,因此对农业管理也很重要。尽管使用基于地面和基于卫星的传感器在监测作物生长参数方面已取得了进步,但由于成像困难,数据处理复杂和空间分辨率低,这些技术的应用受到了限制。因此,本研究评估了高光谱指数,红边参数及其组合的使用,以估计和绘制冬小麦各个生育阶段的AGB和LAI分布。使用安装在无人机上的高光谱传感器获取植被指数和红边参数,并使用逐步回归(SWR)和偏最小二乘回归(PLSR)方法基于这些植被指数准确估算AGB和LAI ,红边参数及其组合。结果表明:(i)大多数研究的植被指数和红边参数与AGB和LAI高度相关; (ii)总体而言,植被指数与AGB和LAI之间的相关性分别强于红边参数与AGB和LAI之间的相关性; (iii)与仅使用植被指数或红边参数的估算相比,结合使用植被指数和红边参数的AGB和LAI估算更为准确; (iv)使用PLSR方法获得的AGB和LAI的估计值优于使用SWR方法获得的估计。因此,结合植被指数和红边参数并采用PLSR方法可以改善AGB和LAI的估计。

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