Semi-automated tracking of iceberg B43 using Sentinel-1 SAR images via Google Earth Engine
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Published:2021-10-07
Issue:10
Volume:15
Page:4727-4744
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ISSN:1994-0424
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Container-title:The Cryosphere
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language:en
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Short-container-title:The Cryosphere
Author:
Koo YoungHyunORCID, Xie Hongjie, Ackley Stephen F.ORCID, Mestas-Nuñez Alberto M., Macdonald Grant J.ORCID, Hyun Chang-Uk
Abstract
Abstract. Sentinel-1 C-band synthetic aperture radar (SAR) images can be used to observe the drift of icebergs over the Southern Ocean with around 1–3 d of temporal resolution and 10–40 m of spatial resolution. The Google Earth Engine (GEE) cloud-based platform allows processing of a large quantity of Sentinel-1 images, saving time and computational resources. In
this study, we process Sentinel-1 data via GEE to detect and track the drift of iceberg B43 during its lifespan of 3 years (2017–2020) in the Southern Ocean. First, to detect all candidate icebergs in Sentinel-1 images, we employ an object-based image segmentation (simple non-iterative clustering – SNIC) and a traditional backscatter threshold method. Next, we automatically choose and trace the location of the target iceberg by
comparing the centroid distance histograms (CDHs) of all detected icebergs
in subsequent days with the CDH of the reference target iceberg. Using this
approach, we successfully track iceberg B43 from the Amundsen Sea to the Ross Sea and examine its changes in area, speed, and direction. Three
periods with sudden losses of area (i.e., split-offs) coincide with periods
of low sea ice concentration, warm air temperature, and high waves. This
implies that these variables may be related to mechanisms causing the
split-off of the iceberg. Since the iceberg is generally surrounded by
compacted sea ice, its drift correlates in part with sea ice motion and wind velocity. Given that the bulk of the iceberg is under water (∼30–60 m freeboard and ∼150–400 m thickness), its motion is
predominantly driven by the westward-flowing Antarctic Coastal Current, which dominates the circulation of the region. Considering the complexity of modeling icebergs, there is a demand for a large iceberg database to better understand the behavior of icebergs and their interactions with surrounding environments. The semi-automated iceberg tracking based on the storage capacity and computing power of GEE can be used for this purpose.
Funder
National Aeronautics and Space Administration National Science Foundation
Publisher
Copernicus GmbH
Subject
Earth-Surface Processes,Water Science and Technology
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