Detection of degraded forests in Guinea, West Africa, using convolutional neural networks and Sentinel-2 time series

Forest degradation is the alteration of forest biomass, structure or services without the conversion to another land cover. Unlike deforestation, forest degradation is subtle and less visible, but it often leads to deforestation eventually. In this study we conducted a comprehensive analysis of degr...

Full description

Saved in:
Bibliographic Details
Main Authors: An Vo Quang, Nicolas Delbart, Gabriel Jaffrain, Camille Pinet
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-03-01
Series:Frontiers in Remote Sensing
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/frsen.2025.1538808/full
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849708864349405184
author An Vo Quang
An Vo Quang
Nicolas Delbart
Gabriel Jaffrain
Camille Pinet
author_facet An Vo Quang
An Vo Quang
Nicolas Delbart
Gabriel Jaffrain
Camille Pinet
author_sort An Vo Quang
collection DOAJ
description Forest degradation is the alteration of forest biomass, structure or services without the conversion to another land cover. Unlike deforestation, forest degradation is subtle and less visible, but it often leads to deforestation eventually. In this study we conducted a comprehensive analysis of degraded forest detection in the Guinea forest region using remote sensing techniques. Our aim was to explore the use of Sentinel-2 satellite imagery in detecting and monitoring forest degradation in Guinea, West Africa, where selective logging is the primary degradation process observed. Consequently, degraded forests exhibit fewer large trees than intact forests, resulting in discontinuities in the canopy structure. This study consists in a comparative analysis between the contextual Random Forest (RF) algorithm previously introduced, three convolutional neural network (CNN) models (U-Net, SegNet, ResNet-UNet), and the photo-interpreted (PI) method, with all model results undergoing independent validation by external Guinean photo-interpreters. The CNN and RF models were trained using subsets of the maps obtained by the PI method. The results show that the CNN U-Net model is the most adequate method, with an 94% agreement with the photo-interpreted map in the Ziama massif for the year 2021 unused for the training. All models were also tested over the Mount Nimba area, which was not included in the training dataset. Again, the U-Net model surpassed all other models with an overall agreement above 91%, and an accuracy of 91.5% as established during a second validation exercise carried out by independent photo-interpreters following the widely used Verified Carbon Standard validation methodology. These results underscore the robustness and efficiency of the U-Net model in accurately identifying degraded forests across diverse areas with similar typology of degraded forests. Altogether, the results show that the method is transferable and applicable across different years and among the different Guinean forest regions, such as the Ziama, Diécké, and Nimba massifs. Based on the superior performance and robustness demonstrated by the U-Net model, we selected it to replace the previous photo-interpretation-based method for forest class updates in the land cover map produced for the Guinean ministry of agriculture.
format Article
id doaj-art-b54aa69b9782448ba581878eb0dfdad9
institution DOAJ
issn 2673-6187
language English
publishDate 2025-03-01
publisher Frontiers Media S.A.
record_format Article
series Frontiers in Remote Sensing
spelling doaj-art-b54aa69b9782448ba581878eb0dfdad92025-08-20T03:15:30ZengFrontiers Media S.A.Frontiers in Remote Sensing2673-61872025-03-01610.3389/frsen.2025.15388081538808Detection of degraded forests in Guinea, West Africa, using convolutional neural networks and Sentinel-2 time seriesAn Vo Quang0An Vo Quang1Nicolas Delbart2Gabriel Jaffrain3Camille Pinet4Laboratoire Interdisciplinaire des Energies de Demain (UMR8236), Université Paris Cité, Paris, FranceIGN FI, Paris, FranceLaboratoire Interdisciplinaire des Energies de Demain (UMR8236), Université Paris Cité, Paris, FranceIGN FI, Paris, FranceIGN FI, Paris, FranceForest degradation is the alteration of forest biomass, structure or services without the conversion to another land cover. Unlike deforestation, forest degradation is subtle and less visible, but it often leads to deforestation eventually. In this study we conducted a comprehensive analysis of degraded forest detection in the Guinea forest region using remote sensing techniques. Our aim was to explore the use of Sentinel-2 satellite imagery in detecting and monitoring forest degradation in Guinea, West Africa, where selective logging is the primary degradation process observed. Consequently, degraded forests exhibit fewer large trees than intact forests, resulting in discontinuities in the canopy structure. This study consists in a comparative analysis between the contextual Random Forest (RF) algorithm previously introduced, three convolutional neural network (CNN) models (U-Net, SegNet, ResNet-UNet), and the photo-interpreted (PI) method, with all model results undergoing independent validation by external Guinean photo-interpreters. The CNN and RF models were trained using subsets of the maps obtained by the PI method. The results show that the CNN U-Net model is the most adequate method, with an 94% agreement with the photo-interpreted map in the Ziama massif for the year 2021 unused for the training. All models were also tested over the Mount Nimba area, which was not included in the training dataset. Again, the U-Net model surpassed all other models with an overall agreement above 91%, and an accuracy of 91.5% as established during a second validation exercise carried out by independent photo-interpreters following the widely used Verified Carbon Standard validation methodology. These results underscore the robustness and efficiency of the U-Net model in accurately identifying degraded forests across diverse areas with similar typology of degraded forests. Altogether, the results show that the method is transferable and applicable across different years and among the different Guinean forest regions, such as the Ziama, Diécké, and Nimba massifs. Based on the superior performance and robustness demonstrated by the U-Net model, we selected it to replace the previous photo-interpretation-based method for forest class updates in the land cover map produced for the Guinean ministry of agriculture.https://www.frontiersin.org/articles/10.3389/frsen.2025.1538808/fullremote sensingtropical forestforest degradationland use/land cover mappingrandom forestconvolutional neural networks
spellingShingle An Vo Quang
An Vo Quang
Nicolas Delbart
Gabriel Jaffrain
Camille Pinet
Detection of degraded forests in Guinea, West Africa, using convolutional neural networks and Sentinel-2 time series
Frontiers in Remote Sensing
remote sensing
tropical forest
forest degradation
land use/land cover mapping
random forest
convolutional neural networks
title Detection of degraded forests in Guinea, West Africa, using convolutional neural networks and Sentinel-2 time series
title_full Detection of degraded forests in Guinea, West Africa, using convolutional neural networks and Sentinel-2 time series
title_fullStr Detection of degraded forests in Guinea, West Africa, using convolutional neural networks and Sentinel-2 time series
title_full_unstemmed Detection of degraded forests in Guinea, West Africa, using convolutional neural networks and Sentinel-2 time series
title_short Detection of degraded forests in Guinea, West Africa, using convolutional neural networks and Sentinel-2 time series
title_sort detection of degraded forests in guinea west africa using convolutional neural networks and sentinel 2 time series
topic remote sensing
tropical forest
forest degradation
land use/land cover mapping
random forest
convolutional neural networks
url https://www.frontiersin.org/articles/10.3389/frsen.2025.1538808/full
work_keys_str_mv AT anvoquang detectionofdegradedforestsinguineawestafricausingconvolutionalneuralnetworksandsentinel2timeseries
AT anvoquang detectionofdegradedforestsinguineawestafricausingconvolutionalneuralnetworksandsentinel2timeseries
AT nicolasdelbart detectionofdegradedforestsinguineawestafricausingconvolutionalneuralnetworksandsentinel2timeseries
AT gabrieljaffrain detectionofdegradedforestsinguineawestafricausingconvolutionalneuralnetworksandsentinel2timeseries
AT camillepinet detectionofdegradedforestsinguineawestafricausingconvolutionalneuralnetworksandsentinel2timeseries