EGU26-11997, updated on 24 Mar 2026
https://doi.org/10.5194/egusphere-egu26-11997
EGU General Assembly 2026
© Author(s) 2026. This work is distributed under
the Creative Commons Attribution 4.0 License.
Oral | Monday, 04 May, 17:40–17:50 (CEST)
 
Room N1
Monitoring forest regrowth using SAR images: The Cusum approach
Solène Renaudineau1, Bertrand Ygorra1, Valentine Sollier1, Marijn Bauters2, Joseph Lokana Mande2, Sara Motte2, Serge Alebadwa2, Wannes Hubau2, Viktor Van de Velde2, Jean-Pierre Wigneron1, Marc Peaucelle1, and Frédéric Frappart1
Solène Renaudineau et al.
  • 1INRAE, Interactions SolPlante Végétale (ISPA UMR), Villenave d’Ornon, France (solene.renaudineau@inrae.fr)
  • 2Department of Environment, Ghent University, Belgium

Small-scale shifting cultivation is the main cause of disturbance in African tropical forests. As a consequence, being able to monitor and precisely quantify deforestation and secondary forest regrowth remains a challenge compared to large scale deforestation processes observed in South American and South-East Asian forests. Remote sensing data has been widely used to identify spatio-temporal variability in forest regrowth. However current approaches primarily rely on optical imagery, which is known to be subject to multiple limitations (e.g.cloud cover) in tropical area . The Synthetic Aperture Radar (SAR) is a promising way for overcoming these limitations. In this study, we developed an approach based on SAR signal (Sentinel-1 and PALSAR-2) to monitor forest regrowth. Our approach is based on a recent change detection technique relying on the cumulated sum of the signal anomalies (CuSum algorithm) that has been developed for detecting deforestation. Here, we show that this method is also able to monitor, not only forest regrowth, but also various land use dynamics and land use changes. Our approach was tested on a small area, east of Kisangani in the Democratic Republic of the Congo. We quantified the number of changes that could be attributed to increased vegetation, for which we compared plots occupied by different vegetations and transition types: 'Agroforestry', 'Cropland' and ' Forest Regrowth'. We showed that each vegetation type can be defined by very specific signal change. These preliminary results suggest that the CuSum method applied on SAR data is promising for monitoring land-use dynamics at a small spatial scale, and specifically for identifying secondary forest regrowth. 

How to cite: Renaudineau, S., Ygorra, B., Sollier, V., Bauters, M., Lokana Mande, J., Motte, S., Alebadwa, S., Hubau, W., Van de Velde, V., Wigneron, J.-P., Peaucelle, M., and Frappart, F.: Monitoring forest regrowth using SAR images: The Cusum approach, EGU General Assembly 2026, Vienna, Austria, 3–8 May 2026, EGU26-11997, https://doi.org/10.5194/egusphere-egu26-11997, 2026.