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Joint leaf chlorophyll content and leaf area index retrieval from Landsat data using a regularized model inversion system (REGFLEC)

机译:使用正则化模型反演系统(REGFLEC)从Landsat数据中检索联合叶绿素含量和叶面积指数

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摘要

Leaf area index (LAI) and leaf chlorophyll content (Chll) represent key biophysical and biochemical controls on water, energy and carbon exchange processes in the terrestrial biosphere. In combination, LAI and Chll provide critical information on vegetation density, vitality and photosynthetic potentials. However, simultaneous retrieval of LAI and Chll from space observations is extremely challenging. Regularization strategies are required to increase the robustness and accuracy of retrieved properties and enable more reliable separation of soil, leaf and canopy parameters. To address these challenges, the REGularized canopy reFLECtance model (REGFLEC) inversion system was refined to incorporate enhanced techniques for exploiting ancillary LAI and temporal information derived from multiple satellite scenes. In this current analysis, REGFLEC is applied to a time-series of Landsat data.A novel aspect of the REGFLEC approach is the fact that no site-specific data are required to calibrate the model, which may be run in a largely automated fashion using information extracted entirely from image-based and other widely available datasets. Validation results, based upon in-situ LAI and Chll observations collected over maize and soybean fields in central Nebraska for the period 2001-2005, demonstrate Chll retrieval with a relative root-mean-square-deviation (RMSD) on the order of 19% (RMSD=8.42μgcm-2). While Chll retrievals were clearly influenced by the version of the leaf optical properties model used (PROSPECT), the application of spatio-temporal regularization constraints was shown to be critical for estimating Chll with sufficient accuracy. REGFLEC also reproduced the dynamics of in-situ measured LAI well (r2 =0.85), but estimates were biased low, particularly over maize (LAI was underestimated by ~36 %). This disparity may be attributed to differences between effective and true LAI caused by significant foliage clumping not being properly accounted for in the canopy reflectance model (SAIL). Additional advances in the retrieval of canopy biophysical and leaf biochemical constituents will require innovative use of existing remote sensing data within physically realistic canopy reflectance models along with the ability to exploit the enhanced spectral and spatial capabilities of upcoming satellite systems.
机译:叶面积指数(LAI)和叶绿素含量(Chll)代表着陆地生物圈中水,能量和碳交换过程的关键生物物理和生化控制。 LAI和Chll结合在一起提供了有关植被密度,活力和光合潜力的关键信息。但是,从空间观测中同时检索LAI和Chll极具挑战性。需要正规化策略来提高检索属性的鲁棒性和准确性,并使土壤,叶和冠层参数更可靠地分离。为了应对这些挑战,对规则化雨棚反射模型(REGFLEC)的反演系统进行了改进,以整合增强的技术,以利用辅助LAI和从多个卫星场景中获得的时间信息。在当前的分析中,将REGFLEC应用于Landsat数据的时间序列.REGFLEC方法的一个新方面是不需要校准特定地点的数据即可对模型进行校准,可以使用以下方法以很大程度上自动化的方式运行该模型信息完全从基于图像的数据集和其他广泛可用的数据集中提取。根据内布拉斯加州中部2001年至2005年在玉米和大豆田上收集的LAI和Chll实地观测资料进行的验证结果显示,Chll的相对均方根偏差(RMSD)约为19% (RMSD =8.42μgcm-2)。尽管Chll检索明显受到所使用的叶片光学特性模型的版本(PROSPECT)的影响,但时空正则化约束条件的应用对于以足够的准确性估算Chll至关重要。 REGFLEC还很好地再现了现场测得的LAI的动态(r2 = 0.85),但估计值偏低,尤其是在玉米上(LAI被低估了约36%)。这种差异可能归因于有效和真实LAI之间的差异,该差异是由于在树冠反射模型(SAIL)中未适当考虑到明显的叶子结块而引起的。冠层生物物理和叶片生化成分检索的其他进展将需要创新地利用物理上逼真的冠层反射率模型中的现有遥感数据,以及利用即将到来的卫星系统增强的光谱和空间功能的能力。

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