Sea Ice–Water Classification of RADARSAT-2 Imagery Based on Residual Neural Networks (ResNet) with Regional Pooling

Sea ice mapping plays an integral role in ship navigation and meteorological modeling in the polar regions. Numerous published studies in sea ice classification using synthetic aperture radar (SAR) have reported high classification rates. However, many of these focus on numerical results based on sa...

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Published in:Remote Sensing
Main Authors: Mingzhe Jiang, Linlin Xu, David A. Clausi
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2022
Subjects:
Online Access:https://doi.org/10.3390/rs14133025
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author Mingzhe Jiang
Linlin Xu
David A. Clausi
author_facet Mingzhe Jiang
Linlin Xu
David A. Clausi
author_sort Mingzhe Jiang
collection MDPI Open Access Publishing
container_issue 13
container_start_page 3025
container_title Remote Sensing
container_volume 14
description Sea ice mapping plays an integral role in ship navigation and meteorological modeling in the polar regions. Numerous published studies in sea ice classification using synthetic aperture radar (SAR) have reported high classification rates. However, many of these focus on numerical results based on sample points and ignore the quality of the inferred sea ice maps. We have designed and implemented a novel SAR sea ice classification algorithm where the spatial context, obtained by the unsupervised IRGS segmentation algorithm, is integrated with texture features extracted by a residual neural network (ResNet) and, using regional pooling, classifies ice and water. This algorithm is trained and tested on a published dataset and cross-validated using leave-one-out (LOO) strategy, obtaining an overall accuracy of 99.67% and outperforming several existing algorithms. In addition, visual results show that this new method produces sea ice maps with natural ice–water boundaries and fewer ice and water errors.
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op_source Remote Sensing; Volume 14; Issue 13; Pages: 3025
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spelling ftmdpi:oai:mdpi.com:/2072-4292/14/13/3025/ 2025-01-17T00:41:50+00:00 Sea Ice–Water Classification of RADARSAT-2 Imagery Based on Residual Neural Networks (ResNet) with Regional Pooling Mingzhe Jiang Linlin Xu David A. Clausi agris 2022-06-24 application/pdf https://doi.org/10.3390/rs14133025 EN eng Multidisciplinary Digital Publishing Institute https://dx.doi.org/10.3390/rs14133025 https://creativecommons.org/licenses/by/4.0/ Remote Sensing; Volume 14; Issue 13; Pages: 3025 sea ice classification convolutional neural network (CNN) RADARSAT-2 Text 2022 ftmdpi https://doi.org/10.3390/rs14133025 2023-08-01T05:28:53Z Sea ice mapping plays an integral role in ship navigation and meteorological modeling in the polar regions. Numerous published studies in sea ice classification using synthetic aperture radar (SAR) have reported high classification rates. However, many of these focus on numerical results based on sample points and ignore the quality of the inferred sea ice maps. We have designed and implemented a novel SAR sea ice classification algorithm where the spatial context, obtained by the unsupervised IRGS segmentation algorithm, is integrated with texture features extracted by a residual neural network (ResNet) and, using regional pooling, classifies ice and water. This algorithm is trained and tested on a published dataset and cross-validated using leave-one-out (LOO) strategy, obtaining an overall accuracy of 99.67% and outperforming several existing algorithms. In addition, visual results show that this new method produces sea ice maps with natural ice–water boundaries and fewer ice and water errors. Text Sea ice MDPI Open Access Publishing Remote Sensing 14 13 3025
spellingShingle sea ice
classification
convolutional neural network (CNN)
RADARSAT-2
Mingzhe Jiang
Linlin Xu
David A. Clausi
Sea Ice–Water Classification of RADARSAT-2 Imagery Based on Residual Neural Networks (ResNet) with Regional Pooling
title Sea Ice–Water Classification of RADARSAT-2 Imagery Based on Residual Neural Networks (ResNet) with Regional Pooling
title_full Sea Ice–Water Classification of RADARSAT-2 Imagery Based on Residual Neural Networks (ResNet) with Regional Pooling
title_fullStr Sea Ice–Water Classification of RADARSAT-2 Imagery Based on Residual Neural Networks (ResNet) with Regional Pooling
title_full_unstemmed Sea Ice–Water Classification of RADARSAT-2 Imagery Based on Residual Neural Networks (ResNet) with Regional Pooling
title_short Sea Ice–Water Classification of RADARSAT-2 Imagery Based on Residual Neural Networks (ResNet) with Regional Pooling
title_sort sea ice–water classification of radarsat-2 imagery based on residual neural networks (resnet) with regional pooling
topic sea ice
classification
convolutional neural network (CNN)
RADARSAT-2
topic_facet sea ice
classification
convolutional neural network (CNN)
RADARSAT-2
url https://doi.org/10.3390/rs14133025