4.7 Article

Mapping landscape canopy nitrogen content from space using PRISMA data

Journal

ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING
Volume 178, Issue -, Pages 382-395

Publisher

ELSEVIER
DOI: 10.1016/j.isprsjprs.2021.06.017

Keywords

Canopy nitrogen content; PRISMA; CHIME; Hybrid retrieval; Gaussian process regression; Dimensionality reduction; Active learning; Imaging spectroscopy

Funding

  1. European Research Council (ERC) [755617]
  2. Ramon y Cajal Contract (Spanish Ministry of Science, Innovation and Universities)
  3. EnMAP scientific preparation program under the DLR Space Administration
  4. German Federal Ministry of Economic Affairs and Energy [50EE1923]
  5. Integrated Infrastructure Operational Programme - ERDF [313011W580]
  6. ESA's CHIME E2E project by GFZ-Potsdam, Germany
  7. COST (European Cooperation in Science and Technology) [CA17134]

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This work presents the first hybrid model for canopy nitrogen content retrieval from spaceborne imaging spectroscopy data. The model combines physically-based models, machine learning regression algorithms, and active learning techniques, achieving promising results in quantifying CNC from space and demonstrating feasibility for routine application in operational contexts.
Satellite imaging spectroscopy for terrestrial applications is reaching maturity with recently launched and upcoming science-driven missions, e.g. PRecursore IperSpettrale della Missione Applicativa (PRISMA) and Environmental Mapping and Analysis Program (EnMAP), respectively. Moreover, the high-priority mission candidate Copernicus Hyperspectral Imaging Mission for the Environment (CHIME) is expected to globally provide routine hyperspectral observations to support new and enhanced services for, among others, sustainable agricultural and biodiversity management. Thanks to the provision of contiguous visible-to-shortwave infrared spectral data, hyperspectral missions open enhanced opportunities for the development of new-generation retrieval models of multiple vegetation traits. Among these, canopy nitrogen content (CNC) is one of the most promising variables given its importance for agricultural monitoring applications. This work presents the first hybrid CNC retrieval model for the operational delivery from spaceborne imaging spectroscopy data. To achieve this, physically-based models were combined with machine learning regression algorithms and active learning (AL). The key concepts involve: (1) coupling the radiative transfer models PROSPECT-PRO and SAIL for the generation of a wide range of vegetation states as training data, (2) using dimensionality reduction to deal with collinearity, (3) applying an AL technique in combination with Gaussian process regression (GPR) for fine-tuning the training dataset on in field collected data, and (4) adding non-vegetated spectra to enable the model to deal with spectral heterogeneity in the image. The final CNC model was successfully validated against field data achieving a low root mean square error (RMSE) of 3.4 g/m(2) and coefficient of determination (R-2) of 0.7. The model was applied to a PRISMA image acquired over agricultural areas in the North of Munich, Germany. Mapping aboveground CNC yielded reliable estimates over the whole landscape and meaningful associated uncertainties. These promising results demonstrate the feasibility of routinely quantifying CNC from space, such as in an operational context as part of the future CHIME mission.

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