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利用高光谱数据的冠层植被指数评估白粉病胁迫下冬小麦的植株水分状况

Canopy Vegetation Indices from Hyperspectral Data to Assess Plant Water Status of Winter Wheat under Powdery Mildew Stress.

作者信息

Feng Wei, Qi Shuangli, Heng Yarong, Zhou Yi, Wu Yapeng, Liu Wandai, He Li, Li Xiao

机构信息

State Key Laboratory of Wheat and Maize Crop Science, National Engineering Research Centre for Wheat, Henan Agricultural UniversityZhengzhou, China.

Collaborative Innovation Center of Henan Grain Crops, Henan Agricultural UniversityZhengzhou, China.

出版信息

Front Plant Sci. 2017 Jul 13;8:1219. doi: 10.3389/fpls.2017.01219. eCollection 2017.

Abstract

Plant disease and pests influence the physiological state and restricts the healthy growth of crops. Physiological measurements are considered the most accurate way of assessing plant health status. In this paper, we researched the use of an hyperspectral remote sensor to detect plant water status in winter wheat infected with powdery mildew. Using a diseased nursery field and artificially inoculated open field experiments, we detected the canopy spectra of wheat at different developmental stages and under different degrees of disease severity. At the same time, destructive sampling was carried out for physical tests to investigate the change of physiological parameters under the condition of disease. Selected vegetation indices (VIs) were mostly comprised of green bands, and correlation coefficients between these common VIs and plant water content (PWC) were generally 0.784-0.902 ( < 0.001), indicating the green waveband may have great potential in the evaluation of water content of winter wheat under powdery mildew stress. The Photochemical Reflectance Index (PRI) was sensitive to physiological response influenced by powdery mildew, and the relationships of PRI with chlorophyll content, the maximum quantum efficiency of PSII photochemistry (Fv/Fm), and the potential activity of PSII photochemistry (Fv/Fo) were good with = 0.639, 0.833, 0.808, respectively. Linear regressions showed PRI demonstrated a steady relationship with PWC across different growth conditions, with = 0.817 and RMSE = 2.17. The acquired PRI model of wheat under the powdery mildew stress has a good compatibility to different experimental fields from booting stage to filling stage compared with the traditional water signal vegetation indices, WBI, FWBI, and FWBI. The verification results with independent data showed that PRI still performed better with = 0.819 between measured and predicted, and corresponding RE = 8.26%. Thus, PRI is recommended as a potentially reliable indicator of PWC in winter wheat with powdery mildew stress. The results will help to understand the physical state of the plant, and provide technical support for disease control using remote sensing during wheat production.

摘要

植物病虫害会影响植物的生理状态,并限制作物的健康生长。生理测量被认为是评估植物健康状况最准确的方法。在本文中,我们研究了使用高光谱遥感传感器来检测感染白粉病的冬小麦的水分状况。通过病害苗圃田和人工接种的大田试验,我们检测了不同发育阶段和不同病害严重程度下小麦的冠层光谱。同时,进行了破坏性采样以进行物理测试,以研究病害条件下生理参数的变化。所选植被指数(VIs)大多由绿波段组成,这些常见VIs与植物含水量(PWC)之间的相关系数一般为0.784 - 0.902(<0.001),表明绿波段在评估白粉病胁迫下冬小麦的含水量方面可能具有很大潜力。光化学反射指数(PRI)对白粉病影响的生理响应敏感,PRI与叶绿素含量、PSII光化学最大量子效率(Fv/Fm)以及PSII光化学潜在活性(Fv/Fo)的关系良好,分别为0.639、0.833、0.808。线性回归表明,PRI在不同生长条件下与PWC呈现稳定关系,R² = 0.817,均方根误差(RMSE) = 2.17。与传统水分信号植被指数WBI、FWBI和FWI相比,所获得的白粉病胁迫下小麦的PRI模型在从孕穗期到灌浆期的不同试验田具有良好的兼容性。独立数据验证结果表明,PRI的测量值与预测值之间的R²仍为0.819,相应的相对误差(RE) = 8.26%。因此,建议将PRI作为白粉病胁迫下冬小麦PWC的潜在可靠指标。研究结果将有助于了解植物的生理状态,并为小麦生产中利用遥感进行病害防治提供技术支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a9ed/5507954/14671da0699e/fpls-08-01219-g0001.jpg

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