Abstract

Decades after release of the first PROSPECT + SAIL (commonly called PROSAIL) versions, the model is still the most famous representative in the field of canopy reflectance modelling and has been widely used to obtain plant biochemical and structural variables, particularly in the agricultural context. The performance of the retrieval is usually assessed by quantifying the distance between the estimated and the in situ measured variables. While this has worked for hundreds of studies that obtained canopy density as a one-sided Leaf Area Index (LAI) or pigment content, little is known about the role of the canopy geometrical properties specified as the Average Leaf Inclination Angle (ALIA). In this study, we exploit an extensive field dataset, including narrow-band field spectra, leaf variables and canopy properties recorded in seven individual campaigns for winter wheat (4x) and silage maize (3x). PROSAIL outputs generally did not represent field spectra well, when in situ variables served as input for the model. A manual fitting of ALIA and leaf water (EWT) revealed significant deviations for both variables (RMSE = 14.5°, 0.020 cm) and an additional fitting of the brown leaf pigments (Cbrown) was necessary to obtain matching spectra at the near infrared (NIR) shoulder. Wheat spectra tend to be underestimated by the model until the emergence of inflorescence when PROSAIL begins to overestimate crop reflectance. This seasonal pattern could be attributed to an attenuated development of ALIAopt compared to in situ measured ALIA. Segmentation of nadir images of wheat was further used to separate spectral contributors into dark background, ears and leaves + stalks. It could be shown that the share of visible fruit ears from nadir view correlates positively with the deviations between field spectral measurement and PROSAIL spectral outputs (R² = 0.78 for aggregation by phenological stages), indicating that retrieval errors increase for ripening stages. An appropriate model parameterization is recommended to assure accurate retrievals of biophysical and biochemical products of interest. The interpretation of inverted ALIA as physical leaf inclinations is considered unfeasible and we argue in favour of treating it as a free calibration parameter.

Highlights

  • Estimation of plant biophysical characteristics is a key factor for agrticultural science and applications [1]

  • We introduce the Interactive Visualization of Vegetation Reflectance Models (IVVRM) tool [77], which is an application in the open source software package EnMAP-Box 3 [78] and serves as a graphical user interface to work with data of multiple constellations of PROSPECT

  • Various authors have successfully carried out inversions for Leaf Area Index (LAI) and leaf chlorophyll content from a variety of crop types using the widely known and applied PROSAIL

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Summary

Introduction

Estimation of plant biophysical characteristics is a key factor for agrticultural science and applications [1]. Water content and non-photosynthetic organic compounds like cellulose are obtained in laboratory analysis [17,18]. Even though these methods are important for a quantitative characterization of plants, they fail to cover larger areas, as they represent the state of individual plants or phyto-elements rather than provide an integrative assessment of canopies. A comprehensive overview of this topic is provided by Verrelst et al [28] Those methods can create reasonable results on the training data, they are prone to overfitting and the relationships found are rarely transferable in space, time or crop type [29]. On the other hand, allow a generic representation of vegetation as 3D-objects via ray tracing Monte Carlo models [30,31,32,33] or 1D turbid medium layers with intrinsic canopy architecture

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