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Grain yield prediction of rice using multi-temporal UAV-based RGB and multispectral images and model transfer - a case study of small farmlands in the South of China

机译:基于多时间UV的RGB和多光谱图像和模型转移粮食产量预测 - 以中国南部小农田为例

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Timely and accurate crop monitoring and yield forecasting before harvesting are valuable for precision management, policy and decision making, and marketing. The aim of this study is to explore the potential of fusing spectral and structural information extracted from the unmanned aerial vehicle (UAV)-based images in the whole growth period of rice to improve the grain yield prediction. A UAV platform carrying RGB and multi-spectral cameras was employed to collect high spatial resolution images of the rice crop under different nitrogen treatments over two years. The vegetation indices (VIs), canopy height and canopy coverage were extracted from UAV-based images, which were then used to develop random forest prediction models for grain yield. Among all of the investigated VIs, it was found that normalized difference yellowness index (NDYI) was the most useful index to monitor the changes in leaf chlorophyll content as well as the leaf greenness during the whole growth period. Meanwhile, the VIs provided a comparable prediction of grain yield to field-measured aboveground biomass and leaf chlorophyll content. Fusion of the multi-temporal normalized difference vegetation index (NDVI), NDYI, canopy height and canopy coverage achieved the best prediction of grain yield with a determination coefficient of 0.85 and 0.83, and relative root mean square error of 3.56% and 2.75% in 2017 and 2018, respectively, which outperformed the results in the reported studies. The initial heading stage was the optimal growth stage for the prediction of grain yield. Furthermore, the robustness of prediction model developed from the dataset in 2017 was validated by an external dataset from 2018 using model transfer. These findings demonstrate that the proposed approach can improve the prediction accuracy of grain yield as well as achieve an efficient monitoring of crop growth.
机译:收获前及时和准确的作物监测和产量预测对于精确的管理,政策和决策以及营销来说是有价值的。本研究的目的是探讨从无人驾驶航空公司(UAV)的滤光片和结构信息在水稻的整个生长期内从无人驾驶的航空车辆(UAV)的图像中提取的潜力,以改善谷物产量预测。采用携带RGB和多光谱相机的UAV平台来收集两年多的氮气处理下的稻米作物的高空间分辨率图像。从基于UAV的图像中提取植被指数(VIS),冠层高度和冠层覆盖,然后用于开发用于谷物产量的随机森林预测模型。在所有调查的VIS中,发现归一化差异yellowness指数(Ndyi)是监测叶片叶绿素含量的变化以及整个生长期内的叶绿素变化的最有用指标。同时,VI提供了对谷物产量的可比预测,以对现场测量的地上生物质和叶片叶绿素含量。多时归一化差异植被指数(NDVI),NDYI,冠层高度和冠层覆盖的融合达到了最佳预测谷物产量,测定系数为0.85和0.83,相对根均方误差为3.56%和2.75% 2017年和2018年,分别表现出报告的研究结果。初始标题阶段是预测谷物产量的最佳生长阶段。此外,2017年从2017年从DataSet开发的预测模型的稳健性由2018年使用模型传输验证了2018年的外部数据集。这些研究结果表明,该方法可以提高粮食产量的预测准确性,并实现了对作物生长的有效监测。

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