Articles | Volume 18, issue 2
https://doi.org/10.5194/gmd-18-337-2025
https://doi.org/10.5194/gmd-18-337-2025
Methods for assessment of models
 | 
22 Jan 2025
Methods for assessment of models |  | 22 Jan 2025

Remote-sensing-based forest canopy height mapping: some models are useful, but might they provide us with even more insights when combined?

Nikola Besic, Nicolas Picard, Cédric Vega, Jean-Daniel Bontemps, Lionel Hertzog, Jean-Pierre Renaud, Fajwel Fogel, Martin Schwartz, Agnès Pellissier-Tanon, Gabriel Destouet, Frédéric Mortier, Milena Planells-Rodriguez, and Philippe Ciais

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Cited articles

Bao, L., Gneiting, T., Grimit, E. P., Guttorp, P., and Raftery, A. E.: Bias Correction and Bayesian Model Averaging for Ensemble Forecasts of Surface Wind Direction, Mon. Weather Rev., 138, 1811–1821, https://doi.org/10.1175/2009MWR3138.1, 2010. a, b
Besic, N.: Code associated to the manuscript “Remote sensing-based forest canopy height mapping: some models are useful, but might they provide us with even more insights when combined?”, Zenodo [code], https://doi.org/10.5281/zenodo.13909201, 2024. a
Besic, N., Durrieu, S., Schleich, A., and Vega, C.: Using Structural Class Pairing to Address the Spatial Mismatch Between GEDI Measurements and NFI Plots, IEEE J. Sel. Top. Appl., 17, 12854–12867, https://doi.org/10.1109/JSTARS.2024.3425431, 2024a. a
Besic, N., Picard, N., Sainte-Marie, J., Meliho, M., Piedallu, C., and Legay, M.: A Novel Framework and a New Score for the Comparative Analysis of Forest Models Accounting for the Impact of Climate Change, J. Agr. Biol. Envir. St., 29, 73–91, https://doi.org/10.1007/s13253-023-00557-y, 2024b. a, b
Bontemps, J.-D., Bouriaud, O., Vega, C., and Bouriaud, L.: Offering the appetite for the monitoring of European forests a diversified diet, Ann. Forest Sci., 79, 19, https://doi.org/10.1186/s13595-022-01139-7, 2022. a
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Short summary
The creation of advanced mapping models for forest attributes, utilizing remote sensing data and incorporating machine or deep learning methods, has become a key area of interest in the domain of forest observation and monitoring. This paper introduces a method where we blend and collectively interpret five models dedicated to estimating forest canopy height. We achieve this through Bayesian model averaging, offering a comprehensive analysis of these remote-sensing-based products.
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