Hyperspectral Imaging for Phenotyping Plant Drought Stress and Nitrogen Interactions Using Multivariate Modeling and Machine Learning Techniques in Wheat
Frank Gyan Okyere, Daniel Kingsley Cudjoe, Nicolas Virlet, March Castle, Andrew Bernard Riche, Latifa Greche, Fady Mohareb, Daniel Simms, Manal Mhada, Malcolm John Hawkesford
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引用次数: 0
Abstract
Accurate detection of drought stress in plants is essential for water use efficiency and agricultural output. Hyperspectral imaging (HSI) provides a non-invasive method in plant phenotyping, allowing the long-term monitoring of plant health due to sensitivity to subtle changes in leaf constituents. The broad spectral range of HSI enables the development of different vegetation indices (VIs) to analyze plant trait responses to multiple stresses, such as the combination of nutrient and drought stresses. However, known VIs may underperform when subjected to multiple stresses. This study presents new VIs in tandem with machine learning models to identify drought stress in wheat plants under varying nitrogen (N) levels. A pot wheat experiment was set up in the glasshouse with four treatments: well-watered high-N (WWHN), well-watered low-N (WWLN), drought-stress high-N (DSHN) and drought-stress low-N (DSLN). In addition to ensuring that plants were watered according to the experiment design, photosynthetic rate (Pn) and stomatal conductance (gs) (which are used to assess plant drought stress) were taken regularly, serving as the ground truth data for this study. The proposed VIs, together with known VIs, were used to train three classification models: support vector machines (SVM), random forest (RF), and deep neural networks (DNN) to classify plants based on their drought status. The proposed VIs achieved more than 0.94 accuracy across all models, and their performance further increased when combined with known VIs. The combined VIs were used to train three regression models to predict the stomatal conductance and photosynthetic rates of plants. The random forest regression model performed best, suggesting that it could be used as a stand-alone tool to forecast gs and Pn and track drought stress in wheat. This study shows that combining hyperspectral data with machine learning can effectively monitor and predict drought stress in crops, especially in varying nitrogen conditions.
准确检测植物的干旱胁迫对提高用水效率和农业产量至关重要。高光谱成像(HSI)为植物表型分析提供了一种非侵入式方法,由于对叶片成分的细微变化非常敏感,因此可以对植物健康状况进行长期监测。高光谱成像技术的光谱范围宽广,可以开发不同的植被指数(VIs),分析植物性状对多种胁迫的反应,如养分胁迫和干旱胁迫的综合反应。然而,已知的植被指数在多重胁迫下可能表现不佳。本研究提出了新的植被指数,并结合机器学习模型来识别不同氮(N)水平下小麦植物的干旱胁迫。在玻璃温室中进行了盆栽小麦实验,共设四个处理:水分充足高氮(WWHN)、水分充足低氮(WWLN)、干旱胁迫高氮(DSHN)和干旱胁迫低氮(DSLN)。除了确保植物按照实验设计进行浇水外,还定期采集光合速率(Pn)和气孔导度(gs)(用于评估植物干旱胁迫),作为本研究的基本真实数据。所提出的VIs与已知VIs一起用于训练三种分类模型:支持向量机(SVM)、随机森林(RF)和深度神经网络(DNN),以根据植物的干旱状况对其进行分类。所提出的 VI 在所有模型中的准确率都超过了 0.94,当与已知 VI 结合使用时,其性能进一步提高。组合后的 VIs 被用于训练三个回归模型,以预测植物的气孔导度和光合速率。随机森林回归模型表现最佳,表明它可作为一种独立的工具来预测气孔导度和光合速率,并跟踪小麦的干旱胁迫。这项研究表明,将高光谱数据与机器学习相结合可以有效地监测和预测作物的干旱胁迫,尤其是在不同的氮素条件下。
期刊介绍:
Remote Sensing (ISSN 2072-4292) publishes regular research papers, reviews, letters and communications covering all aspects of the remote sensing process, from instrument design and signal processing to the retrieval of geophysical parameters and their application in geosciences. Our aim is to encourage scientists to publish experimental, theoretical and computational results in as much detail as possible so that results can be easily reproduced. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.