Deep learning for mapping water bodies in the Sahel 

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Standard

Deep learning for mapping water bodies in the Sahel . / de FLEURY, Mathilde ; Kergoat, Laurent; Brandt, Martin; Fensholt, Rasmus; Kariryaa, Ankit; Kovács, Gyula Mate; Horion, Stéphanie; Grippa, Manuela.

2023. Abstract from EGU General Assembly 2023, Vienna, Austria.

Research output: Contribution to conferenceConference abstract for conferenceResearchpeer-review

Harvard

de FLEURY, M, Kergoat, L, Brandt, M, Fensholt, R, Kariryaa, A, Kovács, GM, Horion, S & Grippa, M 2023, 'Deep learning for mapping water bodies in the Sahel ', EGU General Assembly 2023, Vienna, Austria, 24/04/2023 - 28/04/2023. https://doi.org/10.5194/egusphere-egu23-7347

APA

de FLEURY, M., Kergoat, L., Brandt, M., Fensholt, R., Kariryaa, A., Kovács, G. M., Horion, S., & Grippa, M. (2023). Deep learning for mapping water bodies in the Sahel . Abstract from EGU General Assembly 2023, Vienna, Austria. https://doi.org/10.5194/egusphere-egu23-7347

Vancouver

de FLEURY M, Kergoat L, Brandt M, Fensholt R, Kariryaa A, Kovács GM et al. Deep learning for mapping water bodies in the Sahel . 2023. Abstract from EGU General Assembly 2023, Vienna, Austria. https://doi.org/10.5194/egusphere-egu23-7347

Author

de FLEURY, Mathilde ; Kergoat, Laurent ; Brandt, Martin ; Fensholt, Rasmus ; Kariryaa, Ankit ; Kovács, Gyula Mate ; Horion, Stéphanie ; Grippa, Manuela. / Deep learning for mapping water bodies in the Sahel . Abstract from EGU General Assembly 2023, Vienna, Austria.1 p.

Bibtex

@conference{0ca476449dfe436ab536d202944297e6,
title = "Deep learning for mapping water bodies in the Sahel ",
abstract = "Inland surface water, especially lakes and small water bodies, are essential resources and have impacts on biodiversity, greenhouse gases and health. This is particularly true in the semi-arid Sahelian region, where these resources remain largely unassessed, and little is known about their number, size and quality. Remote sensing monitoring methods remain a promising tool to address these issues at the large scale, especially in areas where field data are scarce. Thanks to technological advances, current remote sensing systems provide data for regular monitoring over time and offer a high spatial resolution, up to 10 metres. Several water detection methods have been developed, many of them using spectral information to differentiate water surfaces from soil, through thresholding on water indices (MNDWI for example), or classifications by clustering. These methods are sensitive to optical reflectance variability and are not straight forwardly applicable to regions, such as the Sahel, where the lakes and their environment are very diverse. Particularly, the presence of aquatic vegetation is an important challenge and source of error for many of the existing algorithms and available databases. Deep learning, a subset of machine learning methods for training deep neural networks, has emerged as the state-of-the-art approach for a large number of remote sensing tasks. In this study, we apply a deep learning model based on the U-Net architecture to detect water bodies in the Sahel using Sentinel-2 MSI data, and 86 manually defined lake polygons as training data. This framework was originally developed for tree mapping (Brandt et al., 2020, https://doi.org/10.1038/s41586-020-2824-5). Our preliminary analysis indicate that our models achieve a good accuracy (98 %). The problems of aquatic vegetation do not appear anymore, and each lake is thus well delimited irrespective of water type and characteristics. Using the water delineations obtained, we then classify different optical water types and thereby highlight different type of waterbodies, that appear to be mostly turbid and eutrophic waters, allowing to better understand the eco-hydrological processes in this region. This method demonstrates the effectiveness of deep learning in detecting water surfaces in the study region. Deriving water masks that account for all kind of waterbodies offer a great opportunity to further characterize different water types. This method is easily reproducible due to the availability of the satellite data/algorithm and can be further applied to detect dams and other human-made features in relation to lake environments. ",
author = "{de FLEURY}, Mathilde and Laurent Kergoat and Martin Brandt and Rasmus Fensholt and Ankit Kariryaa and Kov{\'a}cs, {Gyula Mate} and St{\'e}phanie Horion and Manuela Grippa",
year = "2023",
doi = "10.5194/egusphere-egu23-7347",
language = "English",
note = "EGU General Assembly 2023 : Vienna, Austria & Online ; Conference date: 24-04-2023 Through 28-04-2023",

}

RIS

TY - ABST

T1 - Deep learning for mapping water bodies in the Sahel 

AU - de FLEURY, Mathilde

AU - Kergoat, Laurent

AU - Brandt, Martin

AU - Fensholt, Rasmus

AU - Kariryaa, Ankit

AU - Kovács, Gyula Mate

AU - Horion, Stéphanie

AU - Grippa, Manuela

PY - 2023

Y1 - 2023

N2 - Inland surface water, especially lakes and small water bodies, are essential resources and have impacts on biodiversity, greenhouse gases and health. This is particularly true in the semi-arid Sahelian region, where these resources remain largely unassessed, and little is known about their number, size and quality. Remote sensing monitoring methods remain a promising tool to address these issues at the large scale, especially in areas where field data are scarce. Thanks to technological advances, current remote sensing systems provide data for regular monitoring over time and offer a high spatial resolution, up to 10 metres. Several water detection methods have been developed, many of them using spectral information to differentiate water surfaces from soil, through thresholding on water indices (MNDWI for example), or classifications by clustering. These methods are sensitive to optical reflectance variability and are not straight forwardly applicable to regions, such as the Sahel, where the lakes and their environment are very diverse. Particularly, the presence of aquatic vegetation is an important challenge and source of error for many of the existing algorithms and available databases. Deep learning, a subset of machine learning methods for training deep neural networks, has emerged as the state-of-the-art approach for a large number of remote sensing tasks. In this study, we apply a deep learning model based on the U-Net architecture to detect water bodies in the Sahel using Sentinel-2 MSI data, and 86 manually defined lake polygons as training data. This framework was originally developed for tree mapping (Brandt et al., 2020, https://doi.org/10.1038/s41586-020-2824-5). Our preliminary analysis indicate that our models achieve a good accuracy (98 %). The problems of aquatic vegetation do not appear anymore, and each lake is thus well delimited irrespective of water type and characteristics. Using the water delineations obtained, we then classify different optical water types and thereby highlight different type of waterbodies, that appear to be mostly turbid and eutrophic waters, allowing to better understand the eco-hydrological processes in this region. This method demonstrates the effectiveness of deep learning in detecting water surfaces in the study region. Deriving water masks that account for all kind of waterbodies offer a great opportunity to further characterize different water types. This method is easily reproducible due to the availability of the satellite data/algorithm and can be further applied to detect dams and other human-made features in relation to lake environments.

AB - Inland surface water, especially lakes and small water bodies, are essential resources and have impacts on biodiversity, greenhouse gases and health. This is particularly true in the semi-arid Sahelian region, where these resources remain largely unassessed, and little is known about their number, size and quality. Remote sensing monitoring methods remain a promising tool to address these issues at the large scale, especially in areas where field data are scarce. Thanks to technological advances, current remote sensing systems provide data for regular monitoring over time and offer a high spatial resolution, up to 10 metres. Several water detection methods have been developed, many of them using spectral information to differentiate water surfaces from soil, through thresholding on water indices (MNDWI for example), or classifications by clustering. These methods are sensitive to optical reflectance variability and are not straight forwardly applicable to regions, such as the Sahel, where the lakes and their environment are very diverse. Particularly, the presence of aquatic vegetation is an important challenge and source of error for many of the existing algorithms and available databases. Deep learning, a subset of machine learning methods for training deep neural networks, has emerged as the state-of-the-art approach for a large number of remote sensing tasks. In this study, we apply a deep learning model based on the U-Net architecture to detect water bodies in the Sahel using Sentinel-2 MSI data, and 86 manually defined lake polygons as training data. This framework was originally developed for tree mapping (Brandt et al., 2020, https://doi.org/10.1038/s41586-020-2824-5). Our preliminary analysis indicate that our models achieve a good accuracy (98 %). The problems of aquatic vegetation do not appear anymore, and each lake is thus well delimited irrespective of water type and characteristics. Using the water delineations obtained, we then classify different optical water types and thereby highlight different type of waterbodies, that appear to be mostly turbid and eutrophic waters, allowing to better understand the eco-hydrological processes in this region. This method demonstrates the effectiveness of deep learning in detecting water surfaces in the study region. Deriving water masks that account for all kind of waterbodies offer a great opportunity to further characterize different water types. This method is easily reproducible due to the availability of the satellite data/algorithm and can be further applied to detect dams and other human-made features in relation to lake environments.

U2 - 10.5194/egusphere-egu23-7347

DO - 10.5194/egusphere-egu23-7347

M3 - Conference abstract for conference

T2 - EGU General Assembly 2023

Y2 - 24 April 2023 through 28 April 2023

ER -

ID: 356962077