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利用多角度实验和模拟光谱数据的双角组合植被指数改进小麦冠层叶绿素含量估算

Biangular-Combined Vegetation Indices to Improve the Estimation of Canopy Chlorophyll Content in Wheat Using Multi-Angle Experimental and Simulated Spectral Data.

作者信息

Kong Weiping, Huang Wenjiang, Ma Lingling, Li Chuanrong, Tang Lingli, Guo Jiawei, Zhou Xianfeng, Casa Raffaele

机构信息

Key Laboratory of Quantitative Remote Sensing Information Technology, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, China.

State Key Laboratory of Remote Sensing Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, China.

出版信息

Front Plant Sci. 2022 Apr 15;13:866301. doi: 10.3389/fpls.2022.866301. eCollection 2022.

Abstract

Canopy chlorophyll content (CCC) indicates the photosynthetic functioning of a crop, which is essential for the growth and development and yield increasing. Accurate estimation of CCC from remote-sensing data benefits from including information on leaf chlorophyll and canopy structures. However, conventional nadir reflectance is usually subject to the lack of an adequate expression on the geometric structures and shaded parts of vegetation canopy, and the derived vegetation indices (VIs) are prone to be saturated at high CCC level. Using 3-year field experiments with different wheat cultivars, leaf colors, structural types, and growth stages, and integrated with PROSPECT+SAILh model simulation, we studied the potential of multi-angle reflectance data for the improved estimation of CCC. The characteristics of angular anisotropy in spectral reflectance were investigated. Analyses based on both simulated and experimental multi-angle hyperspectral data were carried out to compare performances of 20 existing VIs at different viewing angles, and to propose an algorithm to develop novel biangular-combined vegetation indices (BCVIs) for tracking CCC dynamics in wheat. The results indicated that spectral reflectance values, as well as the coefficient of determination ( ) between mono-angular VIs and CCC, at back-scattering directions, were mostly higher than those at forward-scattering directions. Mono-angular VIs at +30° angle, were closest to the hot-spot position in our case, achieved the highest among 13 viewing angles including the nadir observation. The general formulation for the newly developed BCVIs was BCVI = × VI - (1 - ) × VI, in which the VI was used to characterize chlorophyll status, while the subtraction of VI at θ1 and θ2 viewing angles in a proportion was used to highlight the canopy structural information. From our result, the values of the θ1 and θ2 around hot-spot and dark-spot positions, and the of 0.6 or 0.7 were found as the optimized values. Through comparisons revealed that large improvements on CCC modeling could be obtained by the BCVIs, especially for the experimental data, indicated by the increase in by 25.1-51.4%, as compared to the corresponding mono-angular VIs at +30° angle. The BCVI was proved to greatly undermine the saturation effect of mono-angular MCARI[705,750], expressing the best linearity and the most sensitive to CCC, with of 0.98 and 0.72 for simulated and experimental data, respectively. Our study will eventually have extensive prospects in monitoring crop phenotype dynamics in for example large breeding trials.

摘要

冠层叶绿素含量(CCC)反映了作物的光合功能,这对作物的生长发育和增产至关重要。从遥感数据中准确估算CCC得益于纳入叶片叶绿素和冠层结构信息。然而,传统的天底反射率通常难以充分表达植被冠层的几何结构和阴影部分,且由此得出的植被指数(VIs)在高CCC水平时容易饱和。通过对不同小麦品种、叶色、结构类型和生长阶段进行为期3年的田间试验,并结合PROSPECT + SAILh模型模拟,我们研究了多角度反射率数据在改进CCC估算方面的潜力。研究了光谱反射率的角向各向异性特征。基于模拟和实验多角度高光谱数据进行分析,比较20种现有植被指数在不同观测角度下的性能,并提出一种算法来开发新型双角度组合植被指数(BCVIs)以跟踪小麦的CCC动态。结果表明,后向散射方向的光谱反射率值以及单角度植被指数与CCC之间的决定系数( )大多高于前向散射方向。在我们的案例中, +30°角的单角度植被指数最接近热点位置,在包括天底观测在内的13个观测角度中取得了最高的 。新开发的BCVIs的一般公式为BCVI = × VI - (1 - ) × VI,其中VI用于表征叶绿素状态,而以一定比例减去θ1和θ2观测角度下的VI用于突出冠层结构信息。从我们的结果来看,发现热点和暗点位置周围的θ1和θ2值以及 为0.6或0.7是优化值。通过比较发现,BCVIs在CCC建模方面有很大改进,特别是对于实验数据,与 +30°角相应的单角度植被指数相比, 增加了25.1 - 51.4%。事实证明,BCVI极大地削弱了单角度MCARI[705,750]的饱和效应,表现出最佳的线性关系且对CCC最为敏感,模拟数据和实验数据的 分别为0.98和0.72。我们的研究最终在例如大型育种试验中监测作物表型动态方面将具有广阔前景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2dc1/9051475/ad29be5c82e5/fpls-13-866301-g001.jpg

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