Toward Automated Ice-Water Classification on Large Northern Lakes Using RADARSAT-2 Synthetic Aperture Radar Imagery

Changes to ice cover on lakes throughout the northern landscape has been established as an indicator of climate change and variability. These changes are expected to have implications for both human and environmental systems. Additionally, monitoring lake ice cover is required to enable more reliabl...

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Bibliographic Details
Main Author: Hoekstra, Marie
Format: Master Thesis
Language:English
Published: University of Waterloo 2018
Subjects:
SAR
Online Access:http://hdl.handle.net/10012/13340
id ftunivwaterloo:oai:uwspace.uwaterloo.ca:10012/13340
record_format openpolar
spelling ftunivwaterloo:oai:uwspace.uwaterloo.ca:10012/13340 2023-05-15T16:23:00+02:00 Toward Automated Ice-Water Classification on Large Northern Lakes Using RADARSAT-2 Synthetic Aperture Radar Imagery Hoekstra, Marie 2018 http://hdl.handle.net/10012/13340 en eng University of Waterloo http://hdl.handle.net/10012/13340 SAR Lake Ice Classification IRGS RADARSAT-2 Master Thesis 2018 ftunivwaterloo 2022-06-18T23:01:52Z Changes to ice cover on lakes throughout the northern landscape has been established as an indicator of climate change and variability. These changes are expected to have implications for both human and environmental systems. Additionally, monitoring lake ice cover is required to enable more reliable weather forecasting across lake-rich northern latitudes. Currently the Canadian Ice Service (CIS) monitors lakes using RADARSAT-2 SAR (synthetic aperture radar) and optical imagery through visual interpretation, with total lake ice cover reported weekly as a fraction out of ten. An automated method of classification would allow for more detailed records to be delivered operationally. In this research, the Iterative Region Growing using Semantics (IRGS) approach has been employed to perform ice-water classification on 61 RADARSAT-2 scenes of Great Bear Lake and Great Slave Lake over a three year period. This approach first locally segments homogeneous regions in an image, then merges similar regions into classes across the entire scene. These classes are manually labelled by the user, however automated labelling capability is currently in development. An accuracy assessment has been performed on the classification results, comparing outcomes with user-generated reference data as well as the CIS fraction reported at the time of image acquisition. The overall average accuracy of the IRGS method for this dataset is 92%, demonstrating the potential of this semi-automated method to provide detailed and reliable lake ice cover information. Master Thesis Great Bear Lake Great Slave Lake University of Waterloo, Canada: Institutional Repository Great Bear Lake ENVELOPE(-120.753,-120.753,65.834,65.834) Great Slave Lake ENVELOPE(-114.001,-114.001,61.500,61.500)
institution Open Polar
collection University of Waterloo, Canada: Institutional Repository
op_collection_id ftunivwaterloo
language English
topic SAR
Lake Ice
Classification
IRGS
RADARSAT-2
spellingShingle SAR
Lake Ice
Classification
IRGS
RADARSAT-2
Hoekstra, Marie
Toward Automated Ice-Water Classification on Large Northern Lakes Using RADARSAT-2 Synthetic Aperture Radar Imagery
topic_facet SAR
Lake Ice
Classification
IRGS
RADARSAT-2
description Changes to ice cover on lakes throughout the northern landscape has been established as an indicator of climate change and variability. These changes are expected to have implications for both human and environmental systems. Additionally, monitoring lake ice cover is required to enable more reliable weather forecasting across lake-rich northern latitudes. Currently the Canadian Ice Service (CIS) monitors lakes using RADARSAT-2 SAR (synthetic aperture radar) and optical imagery through visual interpretation, with total lake ice cover reported weekly as a fraction out of ten. An automated method of classification would allow for more detailed records to be delivered operationally. In this research, the Iterative Region Growing using Semantics (IRGS) approach has been employed to perform ice-water classification on 61 RADARSAT-2 scenes of Great Bear Lake and Great Slave Lake over a three year period. This approach first locally segments homogeneous regions in an image, then merges similar regions into classes across the entire scene. These classes are manually labelled by the user, however automated labelling capability is currently in development. An accuracy assessment has been performed on the classification results, comparing outcomes with user-generated reference data as well as the CIS fraction reported at the time of image acquisition. The overall average accuracy of the IRGS method for this dataset is 92%, demonstrating the potential of this semi-automated method to provide detailed and reliable lake ice cover information.
format Master Thesis
author Hoekstra, Marie
author_facet Hoekstra, Marie
author_sort Hoekstra, Marie
title Toward Automated Ice-Water Classification on Large Northern Lakes Using RADARSAT-2 Synthetic Aperture Radar Imagery
title_short Toward Automated Ice-Water Classification on Large Northern Lakes Using RADARSAT-2 Synthetic Aperture Radar Imagery
title_full Toward Automated Ice-Water Classification on Large Northern Lakes Using RADARSAT-2 Synthetic Aperture Radar Imagery
title_fullStr Toward Automated Ice-Water Classification on Large Northern Lakes Using RADARSAT-2 Synthetic Aperture Radar Imagery
title_full_unstemmed Toward Automated Ice-Water Classification on Large Northern Lakes Using RADARSAT-2 Synthetic Aperture Radar Imagery
title_sort toward automated ice-water classification on large northern lakes using radarsat-2 synthetic aperture radar imagery
publisher University of Waterloo
publishDate 2018
url http://hdl.handle.net/10012/13340
long_lat ENVELOPE(-120.753,-120.753,65.834,65.834)
ENVELOPE(-114.001,-114.001,61.500,61.500)
geographic Great Bear Lake
Great Slave Lake
geographic_facet Great Bear Lake
Great Slave Lake
genre Great Bear Lake
Great Slave Lake
genre_facet Great Bear Lake
Great Slave Lake
op_relation http://hdl.handle.net/10012/13340
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