Ecophysiological variables retrieval and early stress detection: insights from a synthetic spatial scaling exercise
Type
Journal article
Language
English
Date issued
2024
Author
Pacheco-Labrador, Javier
Cendrero-Mateo, M.Pilar
Van Wittenberghe, Shari
Hernandez-Sequeira, Itza
Koren, Gerbrand
Prikaziuk, Egor
Fóti, Szilvia
Tomelleri, Enrico
Maseyk, Kadmiel
Čereković, Nataša
Gonzalez-Cascon, Rosario
Malenovský, Zbyněk
Albert-Saiz, Mar
Antala, Michal
Balogh, János
Buddenbaum, Henning
Dehghan-Shoar, Mohammad Hossain
Fennell, Joseph T.
Féret, Jean-Baptiste
Balde, Hamadou
Machwitz, Miriam
Mészáros, Ádám
Miao, Guofang
Morata, Miguel
Naethe, Paul
Nagy, Zoltán
Pintér, Krisztina
Pullanagari, R. Reddy
Siegmann, Bastian
Wang, Sheng
Zhang, Chenhui
Kopkáně, Daniel
Faculty
Wydział Inżynierii Środowiska i Inżynierii Mechanicznej
PBN discipline
environmental engineering, mining and energy
Journal
International Journal of Remote Sensing
ISSN
0143-1161
Abstract (EN)
The ability to access physiologically driven signals, such as surface temperature, photochemical reflectance index (PRI), and sun-induced chlorophyll fluorescence (SIF), through remote sensing (RS) are exciting developments for vegetation studies. Accessing this ecophysiological information requires considering processes operating at scales from the top-of-the-canopy to the photosystems, adding complexity compared to reflectance index-based approaches. To investigate the maturity and knowledge of the growing RS community in this area, COST Action CA17134 SENSECO organized a Spatial Scaling Challenge (SSC). Challenge participants were asked to retrieve four key ecophysiological variables for a field each of maize and wheat from a simulated field campaign: leaf area index (LAI), leaf chlorophyll content (Cab), maximum carboxylation rate (Vcmax,25), and non-photochemical quenching (NPQ). The simulated campaign data included hyperspectral optical, thermal and SIF imagery, together with ground sampling of the four variables. Non-parametric methods that combined multiple spectral domains and field measurements were used most often, thereby indirectly performing the top-of-the-canopy to photosystem scaling. LAI and Cab were reliably retrieved in most cases, whereas Vcmax,25 and NPQ were less accurately estimated and demanded information ancillary to RS imagery. The factors considered least by participants were the biophysical and physiological canopy vertical profiles, the spatial mismatch between RS sensors, the temporal mismatch between field sampling and RS acquisition, and measurement uncertainty. Furthermore, few participants developed NPQ maps into stress maps or provided a deeper analysis of their parameter retrievals. The SSC shows that, despite advances in statistical and physically based models, the vegetation RS community should improve how field and RS data are integrated and scaled in space and time. We expect this work will guide newcomers and support robust advances in this research field.
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CC-BY - Attribution
Open access date
October 28, 2024