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Large-Scale High-Resolution Coastal Mangrove Forests Mapping Across West Africa With Machine Learning Ensemble and Satellite Big DataCoastal mangrove forests provide important ecosystem goods and services, including carbon sequestration, biodiversity conservation, and hazard mitigation. However, they are being destroyed at an alarming rate by human activities. To characterize mangrove forest changes, evaluate their impacts, and support relevant protection and restoration decision making, accurate and up-to-date mangrove extent mapping at large spatial scales is essential. Available large-scale mangrove extent data products use a single machine learning method commonly with 30 m Landsat imagery, and significant inconsistencies remain among these data products. With huge amounts of satellite data involved and the heterogeneity of land surface characteristics across large geographic areas, finding the most suitable method for large-scale high-resolution mangrove mapping is a challenge. The objective of this study is to evaluate the performance of a machine learning ensemble for mangrove forest mapping at 20 m spatial resolution across West Africa using Sentinel-2 (optical) and Sentinel-1 (radar) imagery. The machine learning ensemble integrates three commonly used machine learning methods in land cover and land use mapping, including Random Forest (RF), Gradient Boosting Machine (GBM), and Neural Network (NN). The cloud-based big geospatial data processing platform Google Earth Engine (GEE) was used for pre-processing Sentinel-2 and Sentinel-1 data. Extensive validation has demonstrated that the machine learning ensemble can generate mangrove extent maps at high accuracies for all study regions in West Africa (92%–99% Producer’s Accuracy, 98%–100% User’s Accuracy, 95%–99% Overall Accuracy). This is the first-time that mangrove extent has been mapped at a 20 m spatial resolution across West Africa. The machine learning ensemble has the potential to be applied to other regions of the world and is therefore capable of producing high-resolution mangrove extent maps at global scales periodically.
Document ID
20210016400
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
Authors
Xue Liu
(Harvard University Cambridge, Massachusetts, United States)
Temilola E. Agueh
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Nathan M. Thomas
(University of Maryland, College Park College Park, Maryland, United States)
Weihe Wendy Guan
(Harvard University Cambridge, Massachusetts, United States)
Yanni Zhan
(Columbia University New York, New York, United States)
Pinki Mondal
(Columbia University New York, New York, United States)
David Lagomasino
(East Carolina University Greenville, North Carolina, United States)
Marc Simard
(Jet Propulsion Lab La Cañada Flintridge, California, United States)
Carl C. Trettin
(US Forest Service Washington D.C., District of Columbia, United States)
Rinki Deo
(Harvard University Cambridge, Massachusetts, United States)
Abigail Barenblitt
(University of Maryland, College Park College Park, Maryland, United States)
Date Acquired
May 26, 2021
Publication Date
January 21, 2021
Publication Information
Publication: Frontiers in Earth Science
Publisher: Frontiers Media
Volume: 8
Issue Publication Date: January 1, 2021
e-ISSN: 2296-6463
Subject Category
Earth Resources And Remote Sensing
Funding Number(s)
WBS: 281945.02.03.09.88
CONTRACT_GRANT: 16-CMS16-0073
CONTRACT_GRANT: NNX17AE79A
CONTRACT_GRANT: 80NSSC20K0425
CONTRACT_GRANT: 80NM0018D0004P00002
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
External Peer Committee
Keywords
coastal environment
land cover and land use
mangrove forests
remote sensing
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