Elsayed Salah, Barmeier Gero, Schmidhalter Urs
Department of Plant Sciences, Technical University of Munich, Freising, Germany.
Front Plant Sci. 2018 Oct 10;9:1478. doi: 10.3389/fpls.2018.01478. eCollection 2018.
Proximal remote sensing systems depending on spectral reflectance measurements and image analysis can acquire timely information to make real-time management decisions compared to laborious destructive measurements. There is a need to make nitrogen management decisions at early development stages of cereals when the first top-dressing is made. However, there is insufficient information available about the possibility of detecting differences in the biomass or the nitrogen status of cereals at early development stages and even less comparing its relationship to destructively obtained information. The performance of hyperspectral passive reflectance sensing and digital image analysis was tested in a 2-year study to assess the nitrogen uptake and nitrogen concentration, as well as the biomass fresh and dry weight at early and late tillering stages of wheat from BBCH 19 to 30. Wheat plants were subjected to different levels of nitrogen fertilizer applications and differences in biomass, and the nitrogen status was further created by varying the seeding rate. To analyze the spectral and digital imaging data simple linear regression and partial least squares regression (PLSR) models were used. The green pixel digital analysis, spectral reflectance indices and PLSR of spectral reflectance from 400 to 1000 nm were strongly related to the nitrogen uptake and the biomass fresh and dry weights at individual measurements and for the combined dataset at the early crop development stages. Relationships between green pixels, spectral reflectance indices and PLSR with the biomass and nitrogen status parameters reached coefficients of determination up to 0.95 through the individual measurements and the combined data set. Reflectance-based spectral sensing compared to digital image analysis allows detecting differences in the biomass and nitrogen status already at early growth stages in the tillering phase. Spectral reflectance indices are probably more robust and can more easily be applied compared to PLSR models. This might pave the way for more informed management decisions and potentially lead to improved nitrogen fertilizer management at early development stages.
与费力的破坏性测量相比,基于光谱反射率测量和图像分析的近端遥感系统能够获取及时信息,以便做出实时管理决策。在谷物生长早期进行首次追肥时,需要做出氮肥管理决策。然而,关于在谷物生长早期检测生物量或氮素状况差异的可能性,可用信息不足,而将其与通过破坏性方法获得的信息进行比较的信息则更少。在一项为期两年的研究中,对高光谱被动反射传感和数字图像分析的性能进行了测试,以评估小麦从BBCH 19到30的早期和晚期分蘖阶段的氮素吸收、氮浓度以及生物量鲜重和干重。对小麦植株施用不同水平的氮肥,通过改变播种量进一步制造生物量和氮素状况的差异。为了分析光谱和数字成像数据,使用了简单线性回归和偏最小二乘回归(PLSR)模型。绿色像素数字分析、光谱反射指数以及400至1000 nm光谱反射率的PLSR与各个测量点以及作物生长早期阶段的组合数据集的氮素吸收、生物量鲜重和干重密切相关。通过个体测量和组合数据集,绿色像素、光谱反射指数和PLSR与生物量和氮素状况参数之间的关系的决定系数高达0.95。与数字图像分析相比,基于反射率的光谱传感能够在分蘖期的早期生长阶段检测到生物量和氮素状况的差异。与PLSR模型相比,光谱反射指数可能更稳健,应用起来也更容易。这可能为更明智的管理决策铺平道路,并有可能在生长早期改善氮肥管理。