Development of a Shoreline Detection Method Using an Artificial Neural Network Based on Satellite SAR Imagery

Monitoring shoreline change is one of the essential tasks for sustainable coastal zone management. Due to its wide coverage and relatively high spatiotemporal monitoring resolutions, satellite imagery based on synthetic aperture radar (SAR) is considered a promising data source for shoreline monitor...

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Main Authors: Yoshimitsu Tajima, Lianhui Wu, Kunihiro Watanabe
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Remote Sensing
Subjects:
SAR
Online Access:https://www.mdpi.com/2072-4292/13/12/2254
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spelling doaj-62c4320d7b004991ad4a95220ae4f9732021-06-30T23:43:49ZengMDPI AGRemote Sensing2072-42922021-06-01132254225410.3390/rs13122254Development of a Shoreline Detection Method Using an Artificial Neural Network Based on Satellite SAR ImageryYoshimitsu Tajima0Lianhui Wu1Kunihiro Watanabe2Department of Civil Engineering, The University of Tokyo, Tokyo 113-8656, JapanDepartment of Marine Resources and Energy, Tokyo University of Marine Science and Technology, Tokyo 108-8477, JapanCoast Division, River Department, National Institute for Land and Infrastructure Management, Ministry of Land, Infrastructure and Transport, Ibaraki 305-0804, JapanMonitoring shoreline change is one of the essential tasks for sustainable coastal zone management. Due to its wide coverage and relatively high spatiotemporal monitoring resolutions, satellite imagery based on synthetic aperture radar (SAR) is considered a promising data source for shoreline monitoring. In this study, we developed a robust shoreline detection method based on satellite SAR imagery using an artificial neural network (NN). The method uses the feedforward NN to classify the pixels of SAR imagery into two categories, land and sea. The shoreline location is then determined as a boundary of these two groups of classified pixels. To enhance the performance of the present NN for land–sea classification, we introduced two different approaches in the settings of the input layer that account not only for the local characteristics of pixels but also for the spatial pixel patterns with a certain distance from the target pixel. Two different approaches were tested against SAR images, which were not used for model training, and the results showed classification accuracies higher than 95% in most SAR images. The extracted shorelines were compared with those obtained from eye detection. We found that the root mean square errors of the shoreline position were generally less than around 15 m. The developed method was further applied to two long coasts. The relatively high accuracy and low computational cost support the advantages of the present method for shoreline detection and monitoring. It should also be highlighted that the present method is calibration-free, and has robust applicability to the shoreline with arbitrary angles and profiles.https://www.mdpi.com/2072-4292/13/12/2254shoreline detectionsatelliteSARartificial neural network
collection DOAJ
language English
format Article
sources DOAJ
author Yoshimitsu Tajima
Lianhui Wu
Kunihiro Watanabe
spellingShingle Yoshimitsu Tajima
Lianhui Wu
Kunihiro Watanabe
Development of a Shoreline Detection Method Using an Artificial Neural Network Based on Satellite SAR Imagery
Remote Sensing
shoreline detection
satellite
SAR
artificial neural network
author_facet Yoshimitsu Tajima
Lianhui Wu
Kunihiro Watanabe
author_sort Yoshimitsu Tajima
title Development of a Shoreline Detection Method Using an Artificial Neural Network Based on Satellite SAR Imagery
title_short Development of a Shoreline Detection Method Using an Artificial Neural Network Based on Satellite SAR Imagery
title_full Development of a Shoreline Detection Method Using an Artificial Neural Network Based on Satellite SAR Imagery
title_fullStr Development of a Shoreline Detection Method Using an Artificial Neural Network Based on Satellite SAR Imagery
title_full_unstemmed Development of a Shoreline Detection Method Using an Artificial Neural Network Based on Satellite SAR Imagery
title_sort development of a shoreline detection method using an artificial neural network based on satellite sar imagery
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-06-01
description Monitoring shoreline change is one of the essential tasks for sustainable coastal zone management. Due to its wide coverage and relatively high spatiotemporal monitoring resolutions, satellite imagery based on synthetic aperture radar (SAR) is considered a promising data source for shoreline monitoring. In this study, we developed a robust shoreline detection method based on satellite SAR imagery using an artificial neural network (NN). The method uses the feedforward NN to classify the pixels of SAR imagery into two categories, land and sea. The shoreline location is then determined as a boundary of these two groups of classified pixels. To enhance the performance of the present NN for land–sea classification, we introduced two different approaches in the settings of the input layer that account not only for the local characteristics of pixels but also for the spatial pixel patterns with a certain distance from the target pixel. Two different approaches were tested against SAR images, which were not used for model training, and the results showed classification accuracies higher than 95% in most SAR images. The extracted shorelines were compared with those obtained from eye detection. We found that the root mean square errors of the shoreline position were generally less than around 15 m. The developed method was further applied to two long coasts. The relatively high accuracy and low computational cost support the advantages of the present method for shoreline detection and monitoring. It should also be highlighted that the present method is calibration-free, and has robust applicability to the shoreline with arbitrary angles and profiles.
topic shoreline detection
satellite
SAR
artificial neural network
url https://www.mdpi.com/2072-4292/13/12/2254
work_keys_str_mv AT yoshimitsutajima developmentofashorelinedetectionmethodusinganartificialneuralnetworkbasedonsatellitesarimagery
AT lianhuiwu developmentofashorelinedetectionmethodusinganartificialneuralnetworkbasedonsatellitesarimagery
AT kunihirowatanabe developmentofashorelinedetectionmethodusinganartificialneuralnetworkbasedonsatellitesarimagery
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