Institute of Crop Science and Plant Breeding, Christian-Albrechts-University, 24118 Kiel, Germany.
Sensors (Basel). 2021 Apr 19;21(8):2861. doi: 10.3390/s21082861.
An approach of exploiting and assessing the potential of Sentinel-2 data in the context of precision agriculture by using data from an unmanned aerial vehicle (UAV) is presented based on a four-year dataset. An established model for the estimation of the green area index (GAI) of winter wheat from a UAV-based multispectral camera was used to calibrate the Sentinel-2 data. Large independent datasets were used for evaluation purposes. Furthermore, the potential of the satellite-based GAI-predictions for crop monitoring and yield prediction was tested. Therefore, the total absorbed photosynthetic radiation between spring and harvest was calculated with satellite and UAV data and correlated with the final grain yield. Yield maps at the same resolution were generated by combining yield data on a plot level with a UAV-based crop coverage map. The best tested model for satellite-based GAI-prediction was obtained by combining the near-, infrared- and Red Edge-waveband in a simple ratio (R = 0.82, mean absolute error = 0.52 m/m). Yet, the Sentinel-2 data seem to depict average GAI-developments through the seasons, rather than to map site-specific variations at single acquisition dates. The results show that the lower information content of the satellite-based crop monitoring might be mainly traced back to its coarser Red Edge-band. Additionally, date-specific effects within the Sentinel-2 data were detected. Due to cloud coverage, the temporal resolution was found to be unsatisfactory as well. These results emphasize the need for further research on the applicability of the Sentinel-2 data and a cautious use in the context of precision agriculture.
本研究基于四年的数据集,提出了一种利用无人机 (UAV) 数据开发和评估 Sentinel-2 数据在精准农业中应用潜力的方法。本研究使用了一种从 UAV 多光谱相机估算冬小麦绿色面积指数 (GAI) 的成熟模型来校准 Sentinel-2 数据。本研究使用了大量独立数据集进行评估。此外,还测试了基于卫星的 GAI 预测在作物监测和产量预测方面的潜力。因此,利用卫星和 UAV 数据计算了春末到收获期间的总吸收光合辐射,并将其与最终的谷物产量进行了相关分析。通过将田块水平的产量数据与基于 UAV 的作物覆盖图相结合,生成了具有相同分辨率的产量图。通过在简单比值(R = 0.82,平均绝对误差 = 0.52 m/m)中结合近红外和红边波段,获得了基于卫星的 GAI 预测的最佳测试模型。然而,Sentinel-2 数据似乎描绘了整个季节的平均 GAI 发展情况,而不是在单个采集日期上绘制特定地点的变化。结果表明,基于卫星的作物监测的信息量较低可能主要归因于其较粗的红边带。此外,还检测到 Sentinel-2 数据中特定日期的影响。由于云层覆盖,时间分辨率也不理想。这些结果强调了需要进一步研究 Sentinel-2 数据的适用性,并在精准农业中谨慎使用。