Automatic delineation of glacier grounding lines in differential interferometric synthetic-aperture radar data using deep learning

Abstract Delineating the grounding line of marine-terminating glaciers—where ice starts to become afloat in ocean waters—is crucial for measuring and understanding ice sheet mass balance, glacier dynamics, and their contributions to sea level rise. This task has been previously done using time-consu...

Full description

Bibliographic Details
Main Authors: Yara Mohajerani, Seongsu Jeong, Bernd Scheuchl, Isabella Velicogna, Eric Rignot, Pietro Milillo
Format: Article
Language:English
Published: Nature Publishing Group 2021-03-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-84309-3
id doaj-852b197f28a74683a6a38efa9c33d11d
record_format Article
spelling doaj-852b197f28a74683a6a38efa9c33d11d2021-03-11T12:21:16ZengNature Publishing GroupScientific Reports2045-23222021-03-0111111010.1038/s41598-021-84309-3Automatic delineation of glacier grounding lines in differential interferometric synthetic-aperture radar data using deep learningYara Mohajerani0Seongsu Jeong1Bernd Scheuchl2Isabella Velicogna3Eric Rignot4Pietro Milillo5Department of Earth System Science, University of California IrvineDepartment of Earth System Science, University of California IrvineDepartment of Earth System Science, University of California IrvineDepartment of Earth System Science, University of California IrvineDepartment of Earth System Science, University of California IrvineDepartment of Earth System Science, University of California IrvineAbstract Delineating the grounding line of marine-terminating glaciers—where ice starts to become afloat in ocean waters—is crucial for measuring and understanding ice sheet mass balance, glacier dynamics, and their contributions to sea level rise. This task has been previously done using time-consuming, mostly-manual digitizations of differential interferometric synthetic-aperture radar interferograms by human experts. This approach is no longer viable with a fast-growing set of satellite observations and the need to establish time series over entire continents with quantified uncertainties. We present a fully-convolutional neural network with parallel atrous convolutional layers and asymmetric encoder/decoder components that automatically delineates grounding lines at a large scale, efficiently, and accompanied by uncertainty estimates. Our procedure detects grounding lines within 232 m in 100-m posting interferograms, which is comparable to the performance achieved by human experts. We also find value in the machine learning approach in situations that even challenge human experts. We use this approach to map the tidal-induced variability in grounding line position around Antarctica in 22,935 interferograms from year 2018. Along the Getz Ice Shelf, in West Antarctica, we demonstrate that grounding zones are one order magnitude (13.3 ± 3.9) wider than expected from hydrostatic equilibrium, which justifies the need to map grounding lines repeatedly and comprehensively to inform numerical models.https://doi.org/10.1038/s41598-021-84309-3
collection DOAJ
language English
format Article
sources DOAJ
author Yara Mohajerani
Seongsu Jeong
Bernd Scheuchl
Isabella Velicogna
Eric Rignot
Pietro Milillo
spellingShingle Yara Mohajerani
Seongsu Jeong
Bernd Scheuchl
Isabella Velicogna
Eric Rignot
Pietro Milillo
Automatic delineation of glacier grounding lines in differential interferometric synthetic-aperture radar data using deep learning
Scientific Reports
author_facet Yara Mohajerani
Seongsu Jeong
Bernd Scheuchl
Isabella Velicogna
Eric Rignot
Pietro Milillo
author_sort Yara Mohajerani
title Automatic delineation of glacier grounding lines in differential interferometric synthetic-aperture radar data using deep learning
title_short Automatic delineation of glacier grounding lines in differential interferometric synthetic-aperture radar data using deep learning
title_full Automatic delineation of glacier grounding lines in differential interferometric synthetic-aperture radar data using deep learning
title_fullStr Automatic delineation of glacier grounding lines in differential interferometric synthetic-aperture radar data using deep learning
title_full_unstemmed Automatic delineation of glacier grounding lines in differential interferometric synthetic-aperture radar data using deep learning
title_sort automatic delineation of glacier grounding lines in differential interferometric synthetic-aperture radar data using deep learning
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-03-01
description Abstract Delineating the grounding line of marine-terminating glaciers—where ice starts to become afloat in ocean waters—is crucial for measuring and understanding ice sheet mass balance, glacier dynamics, and their contributions to sea level rise. This task has been previously done using time-consuming, mostly-manual digitizations of differential interferometric synthetic-aperture radar interferograms by human experts. This approach is no longer viable with a fast-growing set of satellite observations and the need to establish time series over entire continents with quantified uncertainties. We present a fully-convolutional neural network with parallel atrous convolutional layers and asymmetric encoder/decoder components that automatically delineates grounding lines at a large scale, efficiently, and accompanied by uncertainty estimates. Our procedure detects grounding lines within 232 m in 100-m posting interferograms, which is comparable to the performance achieved by human experts. We also find value in the machine learning approach in situations that even challenge human experts. We use this approach to map the tidal-induced variability in grounding line position around Antarctica in 22,935 interferograms from year 2018. Along the Getz Ice Shelf, in West Antarctica, we demonstrate that grounding zones are one order magnitude (13.3 ± 3.9) wider than expected from hydrostatic equilibrium, which justifies the need to map grounding lines repeatedly and comprehensively to inform numerical models.
url https://doi.org/10.1038/s41598-021-84309-3
work_keys_str_mv AT yaramohajerani automaticdelineationofglaciergroundinglinesindifferentialinterferometricsyntheticapertureradardatausingdeeplearning
AT seongsujeong automaticdelineationofglaciergroundinglinesindifferentialinterferometricsyntheticapertureradardatausingdeeplearning
AT berndscheuchl automaticdelineationofglaciergroundinglinesindifferentialinterferometricsyntheticapertureradardatausingdeeplearning
AT isabellavelicogna automaticdelineationofglaciergroundinglinesindifferentialinterferometricsyntheticapertureradardatausingdeeplearning
AT ericrignot automaticdelineationofglaciergroundinglinesindifferentialinterferometricsyntheticapertureradardatausingdeeplearning
AT pietromilillo automaticdelineationofglaciergroundinglinesindifferentialinterferometricsyntheticapertureradardatausingdeeplearning
_version_ 1724224372605976576