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A unified vegetation index for quantifying the terrestrial biosphere
Author(s) -
Gustau CampsValls,
Manuel CamposTaberner,
Álvaro MorenoMartínez,
Sophia Walther,
Grégory Duveiller,
Alessandro Cescatti,
Miguel D. Mahecha,
Jordi Muñoz-Marı́,
Francisco Javier Garcı́a-Haro,
Luis Guanter,
Martin Jung,
John A. Gamon,
Markus Reichstein,
Steven W. Running
Publication year - 2021
Publication title -
science advances
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 5.928
H-Index - 146
ISSN - 2375-2548
DOI - 10.1126/sciadv.abc7447
Subject(s) - biosphere , vegetation (pathology) , index (typography) , vegetation index , terrestrial ecosystem , environmental science , vegetation types , terrestrial plant , ecology , physical geography , computer science , ecosystem , normalized difference vegetation index , geography , biology , leaf area index , habitat , world wide web , medicine , pathology
Machine learning generalizes vegetation indices to better quantify the terrestrial biosphere. Empirical vegetation indices derived from spectral reflectance data are widely used in remote sensing of the biosphere, as they represent robust proxies for canopy structure, leaf pigment content, and, subsequently, plant photosynthetic potential. Here, we generalize the broad family of commonly used vegetation indices by exploiting all higher-order relations between the spectral channels involved. This results in a higher sensitivity to vegetation biophysical and physiological parameters. The presented nonlinear generalization of the celebrated normalized difference vegetation index (NDVI) consistently improves accuracy in monitoring key parameters, such as leaf area index, gross primary productivity, and sun-induced chlorophyll fluorescence. Results suggest that the statistical approach maximally exploits the spectral information and addresses long-standing problems in satellite Earth Observation of the terrestrial biosphere. The nonlinear NDVI will allow more accurate measures of terrestrial carbon source/sink dynamics and potentials for stabilizing atmospheric CO2 and mitigating global climate change.

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