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利用无人机影像对田间种植的柳枝稷进行可持续性特征建模

Sustainability Trait Modeling of Field-Grown Switchgrass () Using UAV-Based Imagery.

作者信息

Xu Yaping, Shrestha Vivek, Piasecki Cristiano, Wolfe Benjamin, Hamilton Lance, Millwood Reginald J, Mazarei Mitra, Stewart Charles Neal

机构信息

Department of Plant Sciences, University of Tennessee, Knoxville, TN 37996, USA.

Center for Bioenergy Innovation, Oak Ridge National Laboratory, Oak Ridge, TN 37830, USA.

出版信息

Plants (Basel). 2021 Dec 11;10(12):2726. doi: 10.3390/plants10122726.

Abstract

Unmanned aerial vehicles (UAVs) provide an intermediate scale of spatial and spectral data collection that yields increased accuracy and consistency in data collection for morphological and physiological traits than satellites and expanded flexibility and high-throughput compared to ground-based data collection. In this study, we used UAV-based remote sensing for automated phenotyping of field-grown switchgrass (), a leading bioenergy feedstock. Using vegetation indices calculated from a UAV-based multispectral camera, statistical models were developed for rust disease caused by , leaf chlorophyll, nitrogen, and lignin contents. For the first time, UAV remote sensing technology was used to explore the potentials for multiple traits associated with sustainable production of switchgrass, and one statistical model was developed for each individual trait based on the statistical correlation between vegetation indices and the corresponding trait. Also, for the first time, lignin content was estimated in switchgrass shoots via UAV-based multispectral image analysis and statistical analysis. The UAV-based models were verified by ground-truthing via correlation analysis between the traits measured manually on the ground-based with UAV-based data. The normalized difference red edge (NDRE) vegetation index outperformed the normalized difference vegetation index (NDVI) for rust disease and nitrogen content, while NDVI performed better than NDRE for chlorophyll and lignin content. Overall, linear models were sufficient for rust disease and chlorophyll analysis, but for nitrogen and lignin contents, nonlinear models achieved better results. As the first comprehensive study to model switchgrass sustainability traits from UAV-based remote sensing, these results suggest that this methodology can be utilized for switchgrass high-throughput phenotyping in the field.

摘要

无人机(UAVs)提供了一种中等规模的空间和光谱数据采集方式,与卫星相比,其在形态和生理特征数据采集方面具有更高的准确性和一致性,与地面数据采集相比,具有更大的灵活性和高通量。在本研究中,我们使用基于无人机的遥感技术对田间种植的柳枝稷(一种主要的生物能源原料)进行自动表型分析。利用基于无人机的多光谱相机计算的植被指数,建立了由引起的锈病、叶片叶绿素、氮和木质素含量的统计模型。首次利用无人机遥感技术探索柳枝稷可持续生产相关多个性状的潜力,并基于植被指数与相应性状之间的统计相关性,为每个单独性状建立了一个统计模型。此外,首次通过基于无人机的多光谱图像分析和统计分析估算了柳枝稷嫩枝中的木质素含量。通过对地面手动测量的性状与基于无人机的数据进行相关性分析,对基于无人机的模型进行了实地验证。对于锈病和氮含量,归一化差异红边(NDRE)植被指数优于归一化差异植被指数(NDVI),而对于叶绿素和木质素含量,NDVI表现优于NDRE。总体而言,线性模型足以用于锈病和叶绿素分析,但对于氮和木质素含量,非线性模型取得了更好的结果。作为首次从基于无人机的遥感对柳枝稷可持续性性状进行建模的综合研究,这些结果表明该方法可用于田间柳枝稷的高通量表型分析。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ae9a/8709265/4654b8fa172d/plants-10-02726-g001a.jpg

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