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Estimation of maize above-ground biomass based on stem-leaf separation strategy integrated with LiDAR and optical remote sensing data

机译:基于茎叶分离策略并结合LiDAR和光学遥感数据的玉米地上生物量估算

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摘要

Above-ground biomass (AGB) is an important indicator for effectively assessing crop growth and yield and, in addition, is an important ecological indicator for assessing the efficiency with which crops use light and store carbon in ecosystems. However, most existing methods using optical remote sensing to estimate AGB cannot observe structures below the maize canopy, which may lead to poor estimation accuracy. This paper proposes to use the stem-leaf separation strategy integrated with unmanned aerial vehicle LiDAR and multispectral image data to estimate the AGB in maize. First, the correlation matrix was used to screen optimal the LiDAR structural parameters (LSPs) and the spectral vegetation indices (SVIs). According to the screened indicators, the SVIs and the LSPs were subjected to multivariable linear regression (MLR) with the above-ground leaf biomass (AGLB) and above-ground stem biomass (AGSB), respectively. At the same time, all SVIs derived from multispectral data and all LSPs derived from LiDAR data were subjected to partial least squares regression (PLSR) with the AGLB and AGSB, respectively. Finally, the AGB was computed by adding the AGLB and the AGSB, and each was estimated by using the MLR and the PLSR methods, respectively. The results indicate a strong correlation between the estimated and field-observed AGB using the MLR method (R2 = 0.82, RMSE = 79.80 g/m2, NRMSE = 11.12%) and the PLSR method (R2 = 0.86, RMSE = 72.28 g/m2, NRMSE = 10.07%). The results indicate that PLSR more accurately estimates AGB than MLR, with R2 increasing by 0.04, root mean square error (RMSE) decreasing by 7.52 g/m2, and normalized root mean square error (NRMSE) decreasing by 1.05%. In addition, the AGB is more accurately estimated by combining LiDAR with multispectral data than LiDAR and multispectral data alone, with R2 increasing by 0.13 and 0.30, respectively, RMSE decreasing by 22.89 and 54.92 g/m2, respectively, and NRMSE decreasing by 4.46% and 7.65%, respectively. This study improves the prediction accuracy of AGB and provides a new guideline for monitoring based on the fusion of multispectral and LiDAR data.
机译:地上生物量(AGB)是有效评估作物生长和产量的重要指标,此外,也是评估作物利用光并在生态系统中储存碳的效率的重要生态指标。但是,大多数使用光学遥感方法估算AGB的现有方法无法观察到玉米冠层以下的结构,这可能导致估算精度较差。本文提出将茎叶分离策略与无人飞行器LiDAR和多光谱图像数据相结合来估算玉米的AGB。首先,使用相关矩阵筛选最佳的LiDAR结构参数(LSP)和光谱植被指数(SVI)。根据筛选的指标,分别对SVI和LSP进行地上叶片生物量(AGLB)和地上茎生物量(AGSB)的多元线性回归(MLR)。同时,分别使用AGLB和AGSB对源自多光谱数据的所有SVI和源自LiDAR数据的所有LSP进行偏最小二乘回归(PLSR)。最后,通过将AGLB和AGSB相加来计算AGB,并分别使用MLR和PLSR方法进行估算。结果表明,使用MLR方法估算的AGB与实测的AGB之间存在很强的相关性(R 2 = 0.82,RMSE = 79.80 g / m 2 ,NRMSE = 11.12% )和PLSR方法(R 2 = 0.86,RMSE = 72.28 g / m 2 ,NRMSE = 10.07%)。结果表明,PLSR比MLR更准确地估计AGB,R 2 增加0.04,均方根误差(RMSE)减少7.52 g / m 2 ,并进行归一化均方根误差(NRMSE)降低1.05%。此外,与单独使用LiDAR和多光谱数据相比,通过将LiDAR与多光谱数据结合起来,可以更准确地估算AGB,R 2 分别增加0.13和0.30,RMSE减少22.89和54.92 g / m < sup> 2 ,NRMSE分别下降4.46%和7.65%。这项研究提高了AGB的预测精度,并为基于多光谱和LiDAR数据融合的监测提供了新指南。

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