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Understanding Growth Dynamics and Yield Prediction of Sorghum Using High Temporal Resolution UAV Imagery Time Series and Machine Learning

机译:了解高颞分辨率UAV图像时间序列和机器学习高粱的生长动态和产量预测

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摘要

Unmanned aerial vehicles (UAV) carrying multispectral cameras are increasingly being used for high-throughput phenotyping (HTP) of above-ground traits of crops to study genetic diversity, resource use efficiency and responses to abiotic or biotic stresses. There is significant unexplored potential for repeated data collection through a field season to reveal information on the rates of growth and provide predictions of the final yield. Generating such information early in the season would create opportunities for more efficient in-depth phenotyping and germplasm selection. This study tested the use of high-resolution time-series imagery (5 or 10 sampling dates) to understand the relationships between growth dynamics, temporal resolution and end-of-season above-ground biomass (AGB) in 869 diverse accessions of highly productive (mean AGB = 23.4 Mg/Ha), photoperiod sensitive sorghum. Canopy surface height (CSM), ground cover (GC), and five common spectral indices were considered as features of the crop phenotype. Spline curve fitting was used to integrate data from single flights into continuous time courses. Random Forest was used to predict end-of-season AGB from aerial imagery, and to identify the most informative variables driving predictions. Improved prediction of end-of-season AGB (RMSE reduction of 0.24 Mg/Ha) was achieved earlier in the growing season (10 to 20 days) by leveraging early- and mid-season measurement of the rate of change of geometric and spectral features. Early in the season, dynamic traits describing the rates of change of CSM and GC predicted end-of-season AGB best. Late in the season, CSM on a given date was the most influential predictor of end-of-season AGB. The power to predict end-of-season AGB was greatest at 50 days after planting, accounting for 63% of variance across this very diverse germplasm collection with modest error (RMSE 1.8 Mg/ha). End-of-season AGB could be predicted equally well when spline fitting was performed on data collected from five flights versus 10 flights over the growing season. This demonstrates a more valuable and efficient approach to using UAVs for HTP, while also proposing strategies to add further value.
机译:无人机(UAV)搭载多光谱相机越来越多地被用于高通量的表型分型作物的地上性状(HTP)遗传多样性,资源利用效率和应对研究,以非生物或生物应力。有重复数据收集显著未知潜力通过现场赛季揭示增长的速度信息,并提供最终产量的预测。在本赛季初产生这样的信息将创造更高效的深入表型和种质资源的选择机会。本研究中测试用的高分辨率时间序列图像(5个或10个采样日期)的了解高产的869个不同的种质生长动力学,时间分辨率和结束季节地上生物量(AGB)之间的关系(平均AGB = 23.4的Mg /公顷),光周期敏感的高粱。冠面高度(CSM),地面覆盖(GC),和五个共同谱指数被认为是作物表型的特征。样条曲线拟合用于将数据从一个航班到连续时间的课程整合。随机森林用于从航空影像预测结束赛季AGB,并找出最翔实的变量驱动的预测。通过利用早期和中期季节测量的几何和光谱特征的变化速率的结束季节AGB(RMSE减少0.24的Mg / IIa的)先前在生长期达到(10〜20天)的改进的预测。在本赛季初,描述CSM和GC的变化率动态特性预测结束的赛季最好AGB。在赛季后期,在给定日期CSM是结束赛季AGB最有影响力的预测。功率预测结束赛季AGB是第50天最大的种植后,占方差的63%过这个非常多样化的种质资源收集与适度的误差(RMSE为1.8mg /公顷)。结束赛季AGB可以预测同样当从五个航班与10趟在生长季节采集的数据进行花键配合。这表明使用无人机HTP的同时,也提出战略,以增加更多的价值更有价值和有效的方法。

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