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HERBAGE BIOMASS AND QUALITY STATUS ASSESSMENT IN A MIXED SOWN PASTURE FROM AIRBORNE BASED HYPERSPECTRAL IMAGING

机译:基于机载高光谱成像的混合播种草场中的草本生物量和质量状况评估

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Aerial hyperspectral imaging is one of the potential tools for the site specific agriculture. This study investigates the use of airborne based hyperspectral sensor, the Compact Airborne Spectrographic Imager 3 (CASI-3) data acquired on July 24, 2007, for estimating spatial distributions of green herbage biomass (GBM), nitrogen (N) and neutral detergent fiber (NDF) concentrations comparing the predictive accuracy with in field hyperspectral measurements in a pasture at Hokkaido, Japan. Canopy spectral measurements were made in the field at 42 plots using an ASD FieldSpec FR Pro spectroradiometer, along with concomitant in situ measurements of GBM and concentrations of N and NDF. Three types of partial least squares (PLS) regressions, full-spectrum PLS (FS-PLS), iterative step elimination PLS (ISE-PLS) and genetic algorithm based PLS (GA-PLS), were performed using canopy reflectance data of CASI-3 and ASD, and simulated CASI-3 spectra from ASD (ASD_(CASI)) to predict GBM and concentrations of N and NDF. Among the PLS regressions, GA-PLS showed the best R~2 and lowest RMSECV values in all data set (ASD, CASI-3 and ASD_(CASI)) to predict GBM (R~2 = 0.69-0.86, RMSECV = 48.70-72.68), N (R~2 = 0.61-0.75, RMSECV = 0.25-0.31) and NDF (R~2 = 0.50-0.73, RMSECV = 2.34-3.28). Applying the GA-PLS models on the CASI image, spatial distribution maps of forage GBM and concentrations of N and NDF of herbage were generated.
机译:空中高光谱成像是针对特定地点的农业的潜在工具之一。这项研究调查了基于空中的高光谱传感器(紧凑型空中光谱成像仪3(CASI-3)数据)的使用,该数据于2007年7月24日获得,用于估算绿色草本生物质(GBM),氮(N)和中性洗涤剂纤维的空间分布(NDF)浓度将预测准确性与日本北海道牧场的现场高光谱测量进行了比较。使用ASD FieldSpec FR Pro分光光度计在野外进行了42个地块的冠层光谱测量,并同时进行了GBM和N和NDF浓度的原位测量。使用CASI-的冠层反射数据执行了三种类型的偏最小二乘(PLS)回归:全光谱PLS(FS-PLS),迭代步长消除PLS(ISE-PLS)和基于遗传算法的PLS(GA-PLS)。 3和ASD,并模拟了来自ASD(ASD_(CASI))的CASI-3光谱,以预测GBM以及N和NDF的浓度。在PLS回归中,GA-PLS在所有数据集(ASD,CASI-3和ASD_(CASI))中显示出最佳的R〜2和最低的RMSECV值,以预测GBM(R〜2 = 0.69-0.86,RMSECV = 48.70- 72.68),N(R〜2 = 0.61-0.75,RMSECV = 0.25-0.31)和NDF(R〜2 = 0.50-0.73,RMSECV = 2.34-3.28)。将GA-PLS模型应用于CASI图像,生成了草料GBM的空间分布图以及草料中N和NDF的浓度。

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