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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Estimation of crop LAI using hyperspectral vegetation indices and a hybrid inversion method
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Estimation of crop LAI using hyperspectral vegetation indices and a hybrid inversion method

机译:利用高光谱植被指数和混合反演方法估算农作物LAI

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Leaf area index (LAI) is an important indicator of crop growth. In this paper, a hybrid inversion method was developed to estimate the LAI values of crops. Based on PROSAIL simulation datasets, 43 hyperspectral vegetation indices (VIs), including the optimized soil-adjusted vegetation index (OSVAI) and modified triangular vegetation index (MTVI2), were analyzed to identify optimal VIs for estimating LAI values. Hybrid inversion models were then built to determine the relationships between optimal simulated VIs and the LAI values (generated by the PROSAIL model) using modeling methods, including curve fitting, artificial neural network (ANN) and random forest regression (RFR) algorithms. Finally, remote sensing mapping of a Compact High Resolution Imaging Spectrometer (CHRIS) image was completed using the inversion model to verify the LAI estimation accuracy. The remote sensing mapping of the CHRIS image yielded an accuracy of R-2 = 0.928 and RMSE = 0.485 for OSAVI and R-2 = 0.910 and RMSE = 0.554 for MTVI2, demonstrating the feasibility of high-accuracy estimation of crop LAI using hyperspectral VIs and a hybrid inversion method. The estimation results of various VIs suggested that the identification of the appropriate VIs is critical to improve the inversion accuracy. In addition, to obtain the appropriate VIs, the factors must be evaluated with respect to two aspects, i.e., the sensitivity to target parameters and the insensitivity to interference. In this study, OSVAI and MTVI2 were sensitive to LAI and relatively insensitive to the effects of interference factors, such as chlorophyll, soil background, sky scattered light and observed geometry. Therefore, these indices could be primarily used as VIs for an LAI estimation. The inversion results of different datasets demonstrated that prior information is critical for improving the inversion accuracy and identifying the optimal VIs. Additionally, based on the comparison of the curve fitting, ANN, and RFR algorithms, RFR was an optimal method for modeling in this study, as indicated by the higher R-2 and lower RMSE values for different datasets and various VIs. (C) 2015 Elsevier Inc. All rights reserved.
机译:叶面积指数(LAI)是作物生长的重要指标。本文提出了一种混合反演方法来估算农作物的LAI值。基于PROSAIL仿真数据集,分析了43种高光谱植被指数(VI),包括优化的土壤调整植被指数(OSVAI)和改良的三角植被指数(MTVI2),以确定用于估计LAI值的最佳VI。然后使用包括曲线拟合,人工神经网络(ANN)和随机森林回归(RFR)算法在内的建模方法,构建混合反演模型,以确定最佳仿真VI与LAI值(由PROSAIL模型生成)之间的关系。最后,使用反演模型完成了紧凑型高分辨率成像光谱仪(CHRIS)图像的遥感制图,以验证LAI估计的准确性。 CHRIS图像的遥感映射得出OSAVI的精度为R-2 = 0.928和RMSE = 0.485,MTVI2的精度为R-2 = 0.910和RMSE = 0.554,证明了使用高光谱VI进行作物LAI高精度估算的可行性以及混合反演方法各种VI的估算结果表明,适当VI的识别对于提高反演精度至关重要。另外,为了获得适当的VI,必须从两个方面评估因素,即对目标参数的敏感性和对干扰的敏感性。在这项研究中,OSVAI和MTVI2对LAI敏感,对叶绿素,土壤背景,天空散射光和观察到的几何形状等干扰因素的影响相对不敏感。因此,这些指数可以主要用作用于LAI估计的VI。不同数据集的反演结果表明,先验信息对于提高反演精度和确定最佳VI至关重要。此外,基于曲线拟合,ANN和RFR算法的比较,RFR是该研究中建模的最佳方法,这表明不同数据集和各种VI的R-2值较高且RMSE值较低。 (C)2015 Elsevier Inc.保留所有权利。

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