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Mowing detection using Sentinel-1 and Sentinel-2 time series for large scale grassland monitoring
De Vroey, M.; De Vendictis, L.; Zavagli, M.; Bontemps, S.; Heymans, D.; Radoux, J.; Koetz, B.; Defourny, P. (2022). Mowing detection using Sentinel-1 and Sentinel-2 time series for large scale grassland monitoring. Remote Sens. Environ. 280: 113145. https://dx.doi.org/10.1016/j.rse.2022.113145
In: Remote Sensing of Environment. Elsevier: New York,. ISSN 0034-4257; e-ISSN 1879-0704, meer
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| Auteurs | | Top |
- De Vroey, M.
- De Vendictis, L.
- Zavagli, M.
- Bontemps, S.
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- Heymans, D.
- Radoux, J.
- Koetz, B.
- Defourny, P.
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| Abstract |
Managed grasslands cover about one third of the European utilized agricultural area. Appropriate grassland management is key for balancing trade-offs between provisioning and regulating ecosystem services. The timing and frequency of mowing events are major factors of grassland management. Recent studies have shown the feasibility of detecting mowing events using remote sensing time series from optical and radar satellites. In this study, we present a new method combining the regular observations of Sentinel-1 (S1) and the better accuracy of Sentinel-2 (S2) grassland mowing detection algorithms. This multi-source approach for grassland monitoring was assessed over large areas and in various contexts. The method was first validated in six European countries, based on Planet image interpretation. Its performances and sensitivity were then thoroughly assessed in an independent study area using a more precise and complete reference dataset based on an intensive field campaign. Results showed the robustness of the method across all study areas and different types of grasslands. The method reached a F1-score of 79% for detecting mowing events on hay meadows. Furthermore, the detection of mowing events along the growing season allows to classify mowing practices with an overall accuracy of 69%. This is promisingfor differentiating grasslands in terms of management intensity. The method could therefore be used for largescale grassland monitoring to support agri-environmental schemes in Europe. |
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