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首页> 外文期刊>International Journal of Agricultural and Biological Engineering >Radiative transfer models (RTMs) for field phenotyping inversion of rice based on UAV hyperspectral remote sensing
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Radiative transfer models (RTMs) for field phenotyping inversion of rice based on UAV hyperspectral remote sensing

机译:基于无人机高光谱遥感的水稻田间表型反演的辐射传递模型

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The nondestructive and rapid acquisition of rice field phenotyping information is very important for the precision management of the rice growth process. In this research, the phenotyping information LAI (leaf area index), leaf chlorophyll content (Cab), canopy water content (Cw), and dry matter content (Cdm) of rice was inversed based on the hyperspectral remote sensing technology of an unmanned aerial vehicle (UAV). The improved Sobol global sensitivity analysis (GSA) method was used to analyze the input parameters of the PROSAIL model in the spectral band range of 400-1100 nm, which was obtained by hyperspectral remote sensing by the UAV. The results show that Cab mainly affects the spectrum on 400-780 nm band, Cdm on 760-1000 nm band, Cw on 900-1100 nm band, and LAI on the entire band. The hyperspectral data of the 400-1100 nm band of the rice canopy were acquired by using the M600 UAV remote sensing platform, and the radiance calibration was converted to the canopy emission rate. In combination with the PROSAIL model, the particle swarm optimization algorithm was used to retrieve rice phenotyping information by constructing the cost function. The results showed the following: (1) an accuracy of R2=0.833 and RMSE=0.0969, where RMSE denotes root-mean-square error, was obtained for Cab retrieval; R2=0.816 and RMSE=0.1012 for LAI inversion; R2=0.793 and RMSE=0.1084 for Cdm; and R2=0.665 and RMSE=0.1325 for Cw. The Cw inversion accuracy was not particularly high. (2) The same band will be affected by multiple parameters at the same time. (3) This study adopted the rice phenotyping information inversion method to expand the rice hyperspectral information acquisition field of a UAV based on the phenotypic information retrieval accuracy using a high level of field spectral radiometric accuracy. The inversion method featured a good mechanism, high universality, and easy implementation, which can provide a reference for nondestructive and rapid inversion of rice biochemical parameters using UAV hyperspectral remote sensing. Keywords: UAV, rice phenotyping inversion, hyperspectral remote sensing, PROSAIL model, global sensitivity analysis, precision management DOI: 10.25165/j.ijabe.20171004.3076 Citation: Yu F H, Xu T Y, Du W, Ma H, Zhang G S, Chen C L. Radiative transfer models (RTMs) for field phenotyping inversion of rice based on UAV hyperspectral remote sensing. Int J Agric & Biol Eng, 2017; 10(4): 150–157.
机译:稻田表型信息的无损和快速获取对于水稻生长过程的精确管理非常重要。本研究利用无人航拍机的高光谱遥感技术对水稻的表型信息LAI(叶面积指数),叶绿素含量(Cab),冠层水分含量(Cw)和干物质含量(Cdm)进行了反演。车辆(UAV)。采用改进的Sobol全局灵敏度分析(GSA)方法对PROSAIL模型在400-1100 nm光谱范围内的输入参数进行分析,该光谱是由无人机通过高光谱遥感获得的。结果表明,驾驶室主要影响400-780 nm波段的光谱,760-1000 nm波段的Cdm,900-1100 nm波段的Cw和整个波段的LAI。利用M600无人机遥感平台采集了水稻冠层400-1100 nm波段的高光谱数据,并将辐射定标转换为冠层发射率。结合PROSAIL模型,通过构建成本函数,采用粒子群优化算法检索水稻表型信息。结果表明:(1)获得了用于Cab检索的精度R2 = 0.833和RMSE = 0.0969,其中RMSE表示均方根误差。对于LAI反演,R2 = 0.816和RMSE = 0.1012; Cdm的R2 = 0.793和RMSE = 0.1084; Cw的R2 = 0.665,RMSE = 0.1325。 Cw反演精度不是特别高。 (2)同一频段将同时受到多个参数的影响。 (3)本研究采用水稻表型信息反演方法,利用表型信息的检索精度和高水平的光谱辐射测量精度,扩展了无人机的水稻高光谱信息获取领域。该反演方法机理好,通用性强,易于实施,可为利用无人机高光谱遥感对水稻生化参数进行无损快速反演提供参考。关键字:无人机,水稻表型反演,高光谱遥感,PROSAIL模型,全局灵敏度分析,精确度管理DOI:10.25165 / j.ijabe.20171004.3076引用:于福华,徐天天,杜伟,马海,张国森,陈春玲基于UAV高光谱遥感的水稻田间表型倒置的辐射传递模型(RTM)。国际农业与生物工程杂志,2017; 10(4):150–157。

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