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@INPROCEEDINGS{Buffat:1049209,
author = {Buffat, Jim and Pato, Miguel and Alonso, Kevin and Auer,
Stefan and Carmona, Emiliano and Müller, Rupert and
Rademske, Patrick and Rascher, Uwe and Scharr, Hanno},
title = {{L}everaging deep learning for the retrieval of sun-induced
fluorescence in the {O}$_2$-{A} absorption band from space},
reportid = {FZJ-2025-05291},
year = {2025},
abstract = {Efficiently monitoring the photosynthetic activity of
plants across large areas is a challenging task that has
been addressed in the last decades as part of an ongoing
research interest in the remote sensing of the environment
and agricultural areas. The closest measurable variable to
photosynthetic activity is the emission of sun-induced
chlorophyll fluorescence (SIF). While SIF data retrieved
from spaceborne hyperspectral sensors with low spatial
resolution (> 1 km pixel size) has been used for drought
monitoring, yield prediction, and the estimation of global
gross primary productivity in the past, these sensors
provide only limited insight into the fine-scale dynamics of
photosynthesis. This has led to the preparation of the ESA
Earth Explorer FLEX - the first spaceborne satellite mission
dedicated to SIF retrieval - which promises to address this
gap, offering SIF estimates at a significantly higher
spatial resolution (300 m). In this contribution, we
summarize our results on a novel deep learning based
methodology to retrieve SIF from hyperspectral imagery at
760 nm that could benefit the research in computationally
efficient SIF retrieval and validation of FLEX data.Our
approach was developed and validated using high-quality data
from the HyPlant FLUO sensor, the airborne demonstrator for
FLEX FLORIS, which has a full width at half maximum (FWHM)
of 0.25 nm. In this contribution, we show that the method
can be adapted to data acquired by the spaceborne DESIS
sensor (3.5 nm FWHM) onboard the International Space Station
(ISS) providing for the first time spaceborne SIF estimates
at 30 m. In a validation study conducted with a unique
benchmark dataset consisting of HyPlant and DESIS at-sensor
radiance acquired in a time interval of less than 25 minutes
we find r$^2$ = 0.60 and a mean absolute difference between
the SIF products of the two sensors of 0.78 mW nm$^{-1}$
sr$^{-1}$ m$^{-2}$ at 740 nm. Furthermore, we find r$^2$ =
0.20 in a cross-comparison of DESIS SIF with OCO-3
estimates.Our methodology involves the training of an
encoder-decoder type neural network to perform a
decomposition of the at-sensor radiance into surface and
atmospheric parameters in the spectral window around the
O2-A absorption band. Predicted parameters are evaluated in
the observation space according to a novel label-free
reconstruction based loss formulation. In the case of DESIS,
we additionally introduce supervised regularizing loss terms
to enhance the integration of existing L2A products. In
order to be able to perform radiative transfer simulation as
part of the training process we make use of a
computationally efficient radiative transfer emulator that
we derive from extensive hyperspectral radiative transfer
simulation for both HyPlant and DESIS sensor configurations.
This approach contrasts with traditional spectral fitting
methods by its adoption of a feature-based strategy,
enabling faster inference times.Due to the exceptional
performance of this approach on DESIS data as well as its
beneficial properties showcased in HyPlant data, our
contribution has the potential to enhance research on
computationally efficient SIF retrieval from FLEX data.
Furthermore, its DESIS SIF product may provide a valuable
high-resolution dataset for cross-comparison of FLEX SIF
products in regions where spatial mixing impedes other
validation approaches.},
month = {Jun},
date = {2025-06-23},
organization = {Living Planet Symposium 2025, Vienna
(Austria), 23 Jun 2025 - 27 Jun 2025},
subtyp = {Invited},
cin = {IAS-8 / IBG-2},
cid = {I:(DE-Juel1)IAS-8-20210421 / I:(DE-Juel1)IBG-2-20101118},
pnm = {5112 - Cross-Domain Algorithms, Tools, Methods Labs (ATMLs)
and Research Groups (POF4-511) / 2173 - Agro-biogeosystems:
controls, feedbacks and impact (POF4-217)},
pid = {G:(DE-HGF)POF4-5112 / G:(DE-HGF)POF4-2173},
typ = {PUB:(DE-HGF)24},
doi = {10.34734/FZJ-2025-05291},
url = {https://juser.fz-juelich.de/record/1049209},
}