High-Coverage Satellite-Based Coastal Bathymetry through a Fusion of Physical and Learning Methods

An up-to-date knowledge of water depth is essential for a wide range of coastal activities, such as navigation, fishing, study of coastal erosion, or the observation of the rise of water levels due to climate change. This paper presents a coastal bathymetry estimation method that takes a single sate...

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Main Authors: Céline Danilo, Farid Melgani
Format: Article
Language:English
Published: MDPI AG 2019-02-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/11/4/376
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spelling doaj-373f21b0646c41a4abdfa5acc4c1850d2020-11-24T20:51:28ZengMDPI AGRemote Sensing2072-42922019-02-0111437610.3390/rs11040376rs11040376High-Coverage Satellite-Based Coastal Bathymetry through a Fusion of Physical and Learning MethodsCéline Danilo0Farid Melgani1Department of Information Engineering and Computer Science, University of Trento, via Sommarive, 9, 38123 Trento, ItalyDepartment of Information Engineering and Computer Science, University of Trento, via Sommarive, 9, 38123 Trento, ItalyAn up-to-date knowledge of water depth is essential for a wide range of coastal activities, such as navigation, fishing, study of coastal erosion, or the observation of the rise of water levels due to climate change. This paper presents a coastal bathymetry estimation method that takes a single satellite acquisition as input, aimed at scenarios where in situ data are not available or would be too costly to obtain. The method uses free multispectral images that are easy to obtain for any region of the globe from sources such as the Sentinel-2 or Landsat-8 satellites. In order to address the shortcomings of existing image-only approaches (low resolution, scarce spatial coverage especially in the shallow water zones, dependence on specific physical conditions) we derive a new bathymetry estimation approach that combines a physical wave model with a statistical method based on <i>Gaussian Process Regression</i> learned in an unsupervised way. The resulting system is able to provide a nearly complete coverage of the 2–12-m-depth zone at a resolution of 80 m. Evaluated on three sites around the Hawaiian Islands, our method obtained estimates with a correlation coefficient in the range of 0.7–0.9. Furthermore, the trained models provide equally good results in nearby zones that lack exploitable waves, extending the scope of applicability of the method.https://www.mdpi.com/2072-4292/11/4/376coastal bathymetrymachine learningunsupervised learninglinear wave modelGaussian Process regressionmultispectral imagesHawaiian Islands
collection DOAJ
language English
format Article
sources DOAJ
author Céline Danilo
Farid Melgani
spellingShingle Céline Danilo
Farid Melgani
High-Coverage Satellite-Based Coastal Bathymetry through a Fusion of Physical and Learning Methods
Remote Sensing
coastal bathymetry
machine learning
unsupervised learning
linear wave model
Gaussian Process regression
multispectral images
Hawaiian Islands
author_facet Céline Danilo
Farid Melgani
author_sort Céline Danilo
title High-Coverage Satellite-Based Coastal Bathymetry through a Fusion of Physical and Learning Methods
title_short High-Coverage Satellite-Based Coastal Bathymetry through a Fusion of Physical and Learning Methods
title_full High-Coverage Satellite-Based Coastal Bathymetry through a Fusion of Physical and Learning Methods
title_fullStr High-Coverage Satellite-Based Coastal Bathymetry through a Fusion of Physical and Learning Methods
title_full_unstemmed High-Coverage Satellite-Based Coastal Bathymetry through a Fusion of Physical and Learning Methods
title_sort high-coverage satellite-based coastal bathymetry through a fusion of physical and learning methods
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-02-01
description An up-to-date knowledge of water depth is essential for a wide range of coastal activities, such as navigation, fishing, study of coastal erosion, or the observation of the rise of water levels due to climate change. This paper presents a coastal bathymetry estimation method that takes a single satellite acquisition as input, aimed at scenarios where in situ data are not available or would be too costly to obtain. The method uses free multispectral images that are easy to obtain for any region of the globe from sources such as the Sentinel-2 or Landsat-8 satellites. In order to address the shortcomings of existing image-only approaches (low resolution, scarce spatial coverage especially in the shallow water zones, dependence on specific physical conditions) we derive a new bathymetry estimation approach that combines a physical wave model with a statistical method based on <i>Gaussian Process Regression</i> learned in an unsupervised way. The resulting system is able to provide a nearly complete coverage of the 2–12-m-depth zone at a resolution of 80 m. Evaluated on three sites around the Hawaiian Islands, our method obtained estimates with a correlation coefficient in the range of 0.7–0.9. Furthermore, the trained models provide equally good results in nearby zones that lack exploitable waves, extending the scope of applicability of the method.
topic coastal bathymetry
machine learning
unsupervised learning
linear wave model
Gaussian Process regression
multispectral images
Hawaiian Islands
url https://www.mdpi.com/2072-4292/11/4/376
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