TY  - CONF
AU  - Buffat, Jim
AU  - Pato, Miguel
AU  - Auer, Stefan
AU  - Alonso, Kevin
AU  - Carmona, Emiliano
AU  - Maier, Stefan
AU  - Müller, Rupert
AU  - Rademske, Patrick
AU  - Rascher, Uwe
AU  - Scharr, Hanno
TI  - Leveraging a large-scale radiative transfer simulation for an emulator based retrieval scheme of sun-induced fluorescence in HyPlant imagery
M1  - FZJ-2024-06511
PY  - 2024
AB  - The prediction of sun-induced fluorescence (SIF) from hyperspectral radiance has been identified as a corner stone to assess plants’ photosynthetic efficiency remotely. It is widely accepted that remotely sensed SIF offers great potential for a variety of applications. To provide such estimates, top-of-canopy SIF products derived from passively sensed radiance measurements of various airborne and spaceborne sensors have been developed over the last decades. To date, however, physically based SIF retrieval schemes require a prohibitive use of computationally costly radiative transfer simulations especially when used in complex observational conditions such as in hilly terrain. In this contribution we report on our on-going work to develop a lightweight self-supervised neural network to retrieve SIF in the O$_2$-A absorption band of HyPlant acquisitions. We aim at a tight integration of a physical radiative transfer model with the network to ensure physically sound predictions by leveraging large scale simulation and emulation of HyPlant at-sensor radiance observations. We report on first results that we achieve on a dedicated data set.
T2  - 13th EARSeL Workshop on Imaging Spectroscopy
CY  - 16 Apr 2024 - 18 Apr 2024, Valencia (Spain)
Y2  - 16 Apr 2024 - 18 Apr 2024
M2  - Valencia, Spain
LB  - PUB:(DE-HGF)6
DO  - DOI:10.34734/FZJ-2024-06511
UR  - https://juser.fz-juelich.de/record/1033639
ER  -