Mapping Tropical Forest Cover and Deforestation with Planet NICFI Satellite Images and Deep Learning in Mato Grosso State (Brazil) from 2015 to 2021

Author:

Wagner Fabien H.,Dalagnol Ricardo,Silva-Junior Celso H. L.ORCID,Carter Griffin,Ritz Alison L.,Hirye Mayumi C. M.,Ometto Jean P. H. B.ORCID,Saatchi Sassan

Abstract

Monitoring changes in tree cover for assessment of deforestation is a premise for policies to reduce carbon emission in the tropics. Here, a U-net deep learning model was used to map monthly tropical tree cover in the Brazilian state of Mato Grosso between 2015 and 2021 using 5 m spatial resolution Planet NICFI satellite images. The accuracy of the tree cover model was extremely high, with an F1-score >0.98, further confirmed by an independent LiDAR validation showing that 95% of tree cover pixels had a height >5 m while 98% of non-tree cover pixels had a height <5 m. The biannual map of deforestation was then built from the monthly tree cover map. The deforestation map showed relatively consistent agreement with the official deforestation map from Brazil (67.2%) but deviated significantly from Global Forest Change (GFC)’s year of forest loss, showing that our product is closest to the product made by visual interpretation. Finally, we estimated that 14.8% of Mato Grosso’s total area had undergone clear-cut logging between 2015 and 2021, and that deforestation was increasing, with December 2021, the last date, being the highest. High-resolution imagery from Planet NICFI in conjunction with deep learning techniques can significantly improve the mapping of deforestation extent in tropical regions.

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference56 articles.

1. Global maps of twenty-first century forest carbon fluxes;Harris;Nat. Clim. Chang.,2021

2. Global carbon budget 2021;Friedlingstein;Earth Syst. Sci. Data,2022

3. Doubling of annual forest carbon loss over the tropics during the early twenty-first century;Feng;Nat. Sustain.,2022

4. Shukla, P., Skea, J., Slade, R., Khourdajie, A.A., van Diemen, R., McCollum, D., Pathak, M., Some, S., Vyas, P., and Fradera, R. (2022). IPCC, 2022: Climate Change 2022: Mitigation of Climate Change. Working Group III contribution to the Sixth Assessment Report of the Intergovernmental Panel on Climate Change, Cambridge University Press.

5. Agricultural and forestry trade drives large share of tropical deforestation emissions;Pendrill;Glob. Environ. Chang.,2019

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