Deep Learning Based Sea Ice Classification with Gaofen-3 Fully Polarimetric SAR Data

In this paper, the performance of C-band synthetic aperture radar (SAR) Gaofen-3 (GF-3) quad-polarization Stripmap (QPS) data is assessed for classifying late spring and summer sea ice types. The investigation is based on 18 scenes of GF-3 QPS data acquired in the Arctic Ocean in 2017. In this study...

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Published in:Remote Sensing
Main Authors: Tianyu Zhang, Ying Yang, Mohammed Shokr, Chunlei Mi, Xiao-Ming Li, Xiao Cheng, Fengming Hui
Format: Article in Journal/Newspaper
Language:English
Published: MDPI AG 2021
Subjects:
Q
Online Access:https://doi.org/10.3390/rs13081452
https://doaj.org/article/307cbae3fab84835ba0149481b4dfaa6
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spelling ftdoajarticles:oai:doaj.org/article:307cbae3fab84835ba0149481b4dfaa6 2023-05-15T15:18:29+02:00 Deep Learning Based Sea Ice Classification with Gaofen-3 Fully Polarimetric SAR Data Tianyu Zhang Ying Yang Mohammed Shokr Chunlei Mi Xiao-Ming Li Xiao Cheng Fengming Hui 2021-04-01T00:00:00Z https://doi.org/10.3390/rs13081452 https://doaj.org/article/307cbae3fab84835ba0149481b4dfaa6 EN eng MDPI AG https://www.mdpi.com/2072-4292/13/8/1452 https://doaj.org/toc/2072-4292 doi:10.3390/rs13081452 2072-4292 https://doaj.org/article/307cbae3fab84835ba0149481b4dfaa6 Remote Sensing, Vol 13, Iss 1452, p 1452 (2021) Gaofen-3 polarimetric data sea ice classification residual convolutional network Science Q article 2021 ftdoajarticles https://doi.org/10.3390/rs13081452 2022-12-31T15:12:28Z In this paper, the performance of C-band synthetic aperture radar (SAR) Gaofen-3 (GF-3) quad-polarization Stripmap (QPS) data is assessed for classifying late spring and summer sea ice types. The investigation is based on 18 scenes of GF-3 QPS data acquired in the Arctic Ocean in 2017. In this study, floe ice (FI), brash ice (BI) between floes and open water (OW, ice-free area) were classified based on a mini sea ice residual convolutional network, which we call MSI-ResNet. While investigating the optimal patch size for MSI-ResNet, we found that, as the patch size continues to grow, the classification accuracy first increases and then decreases. A patch size of 31 × 31 was found to achieve the best performance. The performance of classification using different polarization combinations from the QPS data was also assessed. The vertical-vertical (VV) polarization input overestimates the FI category while incorrectly identifying most of the BI as FI. The VH polarization produces a synchronous improvement in FI, BI, and OW discrimination, with a higher overall accuracy and kappa coefficient (91.09% and 0.85, respectively) than the VV polarization (83.37% and 0.70, respectively). The combination of VV and vertical-horizontal (VH) polarizations presents a modest precision improvement for BI and OW together with a slight overestimation for FI. With VV, VH, and horizontal-horizontal (HH) polarization data as the inputs, the user’s accuracy improves to 95.12%, 93.42%, and 95.17% for FI, BI, and OW, respectively. The accuracy was assessed against visual interpretation of the sea ice classes in the images using a stratified sampling method. The application of the MSI-ResNet method to data covering the Beaufort Sea and the north of the Severnaya Zemlya archipelago was found to achieve a high overall accuracy (kappa) of 94.62% (±0.92) and 94.23% (±0.90), respectively. This is similar to the classification accuracy obtained in the Fram Strait. From the results of this study, it is shown that the MSI-ResNet method performs ... Article in Journal/Newspaper Arctic Arctic Ocean Beaufort Sea Fram Strait Sea ice Severnaya Zemlya Directory of Open Access Journals: DOAJ Articles Arctic Arctic Ocean Severnaya Zemlya ENVELOPE(98.000,98.000,79.500,79.500) Remote Sensing 13 8 1452
institution Open Polar
collection Directory of Open Access Journals: DOAJ Articles
op_collection_id ftdoajarticles
language English
topic Gaofen-3
polarimetric data
sea ice classification
residual convolutional network
Science
Q
spellingShingle Gaofen-3
polarimetric data
sea ice classification
residual convolutional network
Science
Q
Tianyu Zhang
Ying Yang
Mohammed Shokr
Chunlei Mi
Xiao-Ming Li
Xiao Cheng
Fengming Hui
Deep Learning Based Sea Ice Classification with Gaofen-3 Fully Polarimetric SAR Data
topic_facet Gaofen-3
polarimetric data
sea ice classification
residual convolutional network
Science
Q
description In this paper, the performance of C-band synthetic aperture radar (SAR) Gaofen-3 (GF-3) quad-polarization Stripmap (QPS) data is assessed for classifying late spring and summer sea ice types. The investigation is based on 18 scenes of GF-3 QPS data acquired in the Arctic Ocean in 2017. In this study, floe ice (FI), brash ice (BI) between floes and open water (OW, ice-free area) were classified based on a mini sea ice residual convolutional network, which we call MSI-ResNet. While investigating the optimal patch size for MSI-ResNet, we found that, as the patch size continues to grow, the classification accuracy first increases and then decreases. A patch size of 31 × 31 was found to achieve the best performance. The performance of classification using different polarization combinations from the QPS data was also assessed. The vertical-vertical (VV) polarization input overestimates the FI category while incorrectly identifying most of the BI as FI. The VH polarization produces a synchronous improvement in FI, BI, and OW discrimination, with a higher overall accuracy and kappa coefficient (91.09% and 0.85, respectively) than the VV polarization (83.37% and 0.70, respectively). The combination of VV and vertical-horizontal (VH) polarizations presents a modest precision improvement for BI and OW together with a slight overestimation for FI. With VV, VH, and horizontal-horizontal (HH) polarization data as the inputs, the user’s accuracy improves to 95.12%, 93.42%, and 95.17% for FI, BI, and OW, respectively. The accuracy was assessed against visual interpretation of the sea ice classes in the images using a stratified sampling method. The application of the MSI-ResNet method to data covering the Beaufort Sea and the north of the Severnaya Zemlya archipelago was found to achieve a high overall accuracy (kappa) of 94.62% (±0.92) and 94.23% (±0.90), respectively. This is similar to the classification accuracy obtained in the Fram Strait. From the results of this study, it is shown that the MSI-ResNet method performs ...
format Article in Journal/Newspaper
author Tianyu Zhang
Ying Yang
Mohammed Shokr
Chunlei Mi
Xiao-Ming Li
Xiao Cheng
Fengming Hui
author_facet Tianyu Zhang
Ying Yang
Mohammed Shokr
Chunlei Mi
Xiao-Ming Li
Xiao Cheng
Fengming Hui
author_sort Tianyu Zhang
title Deep Learning Based Sea Ice Classification with Gaofen-3 Fully Polarimetric SAR Data
title_short Deep Learning Based Sea Ice Classification with Gaofen-3 Fully Polarimetric SAR Data
title_full Deep Learning Based Sea Ice Classification with Gaofen-3 Fully Polarimetric SAR Data
title_fullStr Deep Learning Based Sea Ice Classification with Gaofen-3 Fully Polarimetric SAR Data
title_full_unstemmed Deep Learning Based Sea Ice Classification with Gaofen-3 Fully Polarimetric SAR Data
title_sort deep learning based sea ice classification with gaofen-3 fully polarimetric sar data
publisher MDPI AG
publishDate 2021
url https://doi.org/10.3390/rs13081452
https://doaj.org/article/307cbae3fab84835ba0149481b4dfaa6
long_lat ENVELOPE(98.000,98.000,79.500,79.500)
geographic Arctic
Arctic Ocean
Severnaya Zemlya
geographic_facet Arctic
Arctic Ocean
Severnaya Zemlya
genre Arctic
Arctic Ocean
Beaufort Sea
Fram Strait
Sea ice
Severnaya Zemlya
genre_facet Arctic
Arctic Ocean
Beaufort Sea
Fram Strait
Sea ice
Severnaya Zemlya
op_source Remote Sensing, Vol 13, Iss 1452, p 1452 (2021)
op_relation https://www.mdpi.com/2072-4292/13/8/1452
https://doaj.org/toc/2072-4292
doi:10.3390/rs13081452
2072-4292
https://doaj.org/article/307cbae3fab84835ba0149481b4dfaa6
op_doi https://doi.org/10.3390/rs13081452
container_title Remote Sensing
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