Publications des scientifiques de l'IRD

Ogilvie Andrew, Poussin Jean-Christophe, Bader Jean-Claude, Bayo F., Bodian A., Dacosta H., Dia D., Diop L., Martin Didier, Sambou S. (2020). Combining multi-sensor satellite imagery to improve long-term monitoring of temporary surface water bodies in the Senegal River floodplain. Remote Sensing, 12 (19), 3157 [30 p.].

Titre du document
Combining multi-sensor satellite imagery to improve long-term monitoring of temporary surface water bodies in the Senegal River floodplain
Année de publication
2020
Type de document
Article référencé dans le Web of Science WOS:000586651600001
Auteurs
Ogilvie Andrew, Poussin Jean-Christophe, Bader Jean-Claude, Bayo F., Bodian A., Dacosta H., Dia D., Diop L., Martin Didier, Sambou S.
Source
Remote Sensing, 2020, 12 (19), 3157 [30 p.]
Accurate monitoring of surface water bodies is essential in numerous hydrological and agricultural applications. Combining imagery from multiple sensors can improve long-term monitoring; however, the benefits derived from each sensor and the methods to automate long-term water mapping must be better understood across varying periods and in heterogeneous water environments. All available observations from Landsat 7, Landsat 8, Sentinel-2 and MODIS over 1999-2019 are processed in Google Earth Engines to evaluate and compare the benefits of single and multi-sensor approaches in long-term water monitoring of temporary water bodies, against extensive ground truth data from the Senegal River floodplain. Otsu automatic thresholding is compared with default thresholds and site-specific calibrated thresholds to improve Modified Normalized Difference Water Index (MNDWI) classification accuracy. Otsu thresholding leads to the lowest Root Mean Squared Error (RMSE) and high overall accuracies on selected Sentinel-2 and Landsat 8 images, but performance declines when applied to long-term monitoring compared to default or site-specific thresholds. On MODIS imagery, calibrated thresholds are crucial to improve classification in heterogeneous water environments, and results highlight excellent accuracies even in small (19 km2) water bodies despite the 500 m spatial resolution. Over 1999-2019, MODIS observations reduce average daily RMSE by 48% compared to the full Landsat 7 and 8 archive and by 51% compared to the published Global Surface Water datasets. Results reveal the need to integrate coarser MODIS observations in regional and global long-term surface water datasets, to accurately capture flood dynamics, overlooked by the full Landsat time series before 2013. From 2013, the Landsat 7 and Landsat 8 constellation becomes sufficient, and integrating MODIS observations degrades performance marginally. Combining Landsat and Sentinel-2 yields modest improvements after 2015. These results have important implications to guide the development of multi-sensor products and for applications across large wetlands and floodplains.
Plan de classement
Hydrologie [062] ; Télédétection [126]
Description Géographique
SENEGAL ; FLEUVE SENEGAL VALLEE
Localisation
Fonds IRD [F B010079957]
Identifiant IRD
fdi:010079957
Contact