探索利用无人机遥感数据估算南部非洲典型小农农场玉米作物生产力的前景

M. Sibanda, S. Buthelezi, O. Mutanga, J. Odindi, A. D. Clulow, V. G. P. Chimonyo, S. Gokool, V. Naiken, J. Magidi, T. Mabhaudhi
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摘要

摘要本研究利用无人机多光谱数据估算了玉米籽粒生物量以及籽粒生物量占玉米植株绝对生物量的比例。结果表明,基于光谱数据集组合,无人机衍生数据可准确预测产量,R2 为 0.80 - 0.95,RMSE 为 0.03 - 0.94 kg/m2,RRMSE 为 2.21% - 39.91%。研究结果进一步表明,VT-R1(出苗后 56-63 天)营养生长阶段是早期预测玉米籽粒产量(R2 = 0.85,RMSE = 0.1,RRMSE = 5.08%)和比例产量(R2 = 0.92, RMSE = 0.06, RRMSE = 17.56%),归一化差异植被指数(NDVI)、增强归一化差异植被指数(ENDVI)、土壤调整植被指数(SAVI)和红色边缘带是最理想的预测变量。与生物量和比例产量模型相比,谷物产量模型对玉米产量的估算结果更为准确。这些结果证明了无人机数据在预测小农农场玉米产量方面的价值,而这是以前使用空间分辨率较低的卫星传感器所难以完成的任务。
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EXPLORING THE PROSPECTS OF UAV-REMOTELY SENSED DATA IN ESTIMATING PRODUCTIVITY OF MAIZE CROPS IN TYPICAL SMALLHOLDER FARMS OF SOUTHERN AFRICA
Abstract. This study estimated maize grain biomass, and grain biomass as a proportion of the absolute maize plant biomass using UAV-derived multispectral data. Results showed that UAV-derived data could accurately predict yield with R2 ranging from 0.80 – 0.95, RMSE ranging from 0.03 – 0.94 kg/m2 and RRMSE ranging from 2.21% – 39.91% based on the spectral datasets combined. Results of this study further revealed that the VT-R1 (56–63 days after emergence) vegetative growth stage was the most optimal stage for the early prediction of maize grain yield (R2 = 0.85, RMSE = 0.1, RRMSE = 5.08%) and proportional yield (R2 = 0.92, RMSE = 0.06, RRMSE = 17.56%), with the Normalized Difference Vegetation Index (NDVI), Enhanced Normalized Difference Vegetation Index (ENDVI), Soil Adjusted Vegetation Index (SAVI) and the red edge band being the most optimal prediction variables. The grain yield models produced more accurate results in estimating maize yield when compared to the biomass and proportional yield models. The results demonstrate the value of UAV-derived data in predicting maize yield on smallholder farms – a previously challenging task with coarse spatial resolution satellite sensors.
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