Proof of Concept for Sea Ice Stage of Development Classification Using Deep Learning

Accurate maps of ice concentration and ice type are needed to address increased interest in commercial marine transportation through the Arctic. RADARSAT-2 SAR imagery is the primary source of data used by expert ice analysts at the Canadian Ice Service (CIS) to produce sea ice maps over the Canadia...

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Main Authors: Ryan Kruk, M. Christopher Fuller, Alexander S. Komarov, Dustin Isleifson, Ian Jeffrey
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Remote Sensing
Subjects:
SAR
Online Access:https://www.mdpi.com/2072-4292/12/15/2486
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spelling doaj-8c71ed265391457b85d84fdf2bebd9452020-11-25T03:44:36ZengMDPI AGRemote Sensing2072-42922020-08-01122486248610.3390/rs12152486Proof of Concept for Sea Ice Stage of Development Classification Using Deep LearningRyan Kruk0M. Christopher Fuller1Alexander S. Komarov2Dustin Isleifson3Ian Jeffrey4Department of ECE, University of Manitoba, Winnipeg, MB R3T 5V6, CanadaCentre for Earth Observation Science, University of Manitoba, Winnipeg, MB R3T 5V6, CanadaData Assimilation and Satellite Meteorology Research Section, Environment and Climate Change Canada, Ottawa, ON K1A 0H3, CanadaDepartment of ECE, University of Manitoba, Winnipeg, MB R3T 5V6, CanadaDepartment of ECE, University of Manitoba, Winnipeg, MB R3T 5V6, CanadaAccurate maps of ice concentration and ice type are needed to address increased interest in commercial marine transportation through the Arctic. RADARSAT-2 SAR imagery is the primary source of data used by expert ice analysts at the Canadian Ice Service (CIS) to produce sea ice maps over the Canadian territory. This study serves as a proof of concept that neural networks can be used to accurately predict ice type from SAR data. Datasets of SAR images served as inputs, and CIS ice charts served as labelled outputs to train a neural network to classify sea ice type. Our results show that DenseNet achieves the highest overall classification accuracy of 94.0% including water and the highest ice classification accuracy of 91.8% on a three class dataset using a fusion of HH and HV SAR polarizations for the input samples. The 91.8% ice classification accuracy validates the premise that a neural network can be used to effectively categorize different ice types based on SAR data.https://www.mdpi.com/2072-4292/12/15/2486sea iceArcticCanadian sea ice chartdeep learningSARRADARSAT-2
collection DOAJ
language English
format Article
sources DOAJ
author Ryan Kruk
M. Christopher Fuller
Alexander S. Komarov
Dustin Isleifson
Ian Jeffrey
spellingShingle Ryan Kruk
M. Christopher Fuller
Alexander S. Komarov
Dustin Isleifson
Ian Jeffrey
Proof of Concept for Sea Ice Stage of Development Classification Using Deep Learning
Remote Sensing
sea ice
Arctic
Canadian sea ice chart
deep learning
SAR
RADARSAT-2
author_facet Ryan Kruk
M. Christopher Fuller
Alexander S. Komarov
Dustin Isleifson
Ian Jeffrey
author_sort Ryan Kruk
title Proof of Concept for Sea Ice Stage of Development Classification Using Deep Learning
title_short Proof of Concept for Sea Ice Stage of Development Classification Using Deep Learning
title_full Proof of Concept for Sea Ice Stage of Development Classification Using Deep Learning
title_fullStr Proof of Concept for Sea Ice Stage of Development Classification Using Deep Learning
title_full_unstemmed Proof of Concept for Sea Ice Stage of Development Classification Using Deep Learning
title_sort proof of concept for sea ice stage of development classification using deep learning
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-08-01
description Accurate maps of ice concentration and ice type are needed to address increased interest in commercial marine transportation through the Arctic. RADARSAT-2 SAR imagery is the primary source of data used by expert ice analysts at the Canadian Ice Service (CIS) to produce sea ice maps over the Canadian territory. This study serves as a proof of concept that neural networks can be used to accurately predict ice type from SAR data. Datasets of SAR images served as inputs, and CIS ice charts served as labelled outputs to train a neural network to classify sea ice type. Our results show that DenseNet achieves the highest overall classification accuracy of 94.0% including water and the highest ice classification accuracy of 91.8% on a three class dataset using a fusion of HH and HV SAR polarizations for the input samples. The 91.8% ice classification accuracy validates the premise that a neural network can be used to effectively categorize different ice types based on SAR data.
topic sea ice
Arctic
Canadian sea ice chart
deep learning
SAR
RADARSAT-2
url https://www.mdpi.com/2072-4292/12/15/2486
work_keys_str_mv AT ryankruk proofofconceptforseaicestageofdevelopmentclassificationusingdeeplearning
AT mchristopherfuller proofofconceptforseaicestageofdevelopmentclassificationusingdeeplearning
AT alexanderskomarov proofofconceptforseaicestageofdevelopmentclassificationusingdeeplearning
AT dustinisleifson proofofconceptforseaicestageofdevelopmentclassificationusingdeeplearning
AT ianjeffrey proofofconceptforseaicestageofdevelopmentclassificationusingdeeplearning
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