The Use of Unmanned Aerial Systems to Map Intertidal Sediment

This paper describes a new methodology to map intertidal sediment using a commercially available unmanned aerial system (UAS). A fixed-wing UAS was flown with both thermal and multispectral cameras over three study sites comprising of sandy and muddy areas. Thermal signatures of sediment type were n...

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Main Authors: Iain Fairley, Anouska Mendzil, Michael Togneri, Dominic E. Reeve
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/10/12/1918
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spelling doaj-6c016c19bbc44221a83c00a577689a232020-11-24T22:52:12ZengMDPI AGRemote Sensing2072-42922018-11-011012191810.3390/rs10121918rs10121918The Use of Unmanned Aerial Systems to Map Intertidal SedimentIain Fairley0Anouska Mendzil1Michael Togneri2Dominic E. Reeve3Zienkiewicz Centre for Computational Engineering, College of Engineering, Swansea University, Swansea SA1 8EN, UKZienkiewicz Centre for Computational Engineering, College of Engineering, Swansea University, Swansea SA1 8EN, UKZienkiewicz Centre for Computational Engineering, College of Engineering, Swansea University, Swansea SA1 8EN, UKZienkiewicz Centre for Computational Engineering, College of Engineering, Swansea University, Swansea SA1 8EN, UKThis paper describes a new methodology to map intertidal sediment using a commercially available unmanned aerial system (UAS). A fixed-wing UAS was flown with both thermal and multispectral cameras over three study sites comprising of sandy and muddy areas. Thermal signatures of sediment type were not observable in the recorded data and therefore only the multispectral results were used in the sediment classification. The multispectral camera consisted of a Red&#8315;Green&#8315;Blue (RGB) camera and four multispectral sensors covering the green, red, red edge and near-infrared bands. Statistically significant correlations (&gt;99%) were noted between the multispectral reflectance and both moisture content and median grain size. The best correlation against median grain size was found with the near-infrared band. Three classification methodologies were tested to split the intertidal area into sand and mud: k-means clustering, artificial neural networks, and the random forest approach. Classification methodologies were tested with nine input subsets of the available data channels, including transforming the RGB colorspace to the Hue&#8315;Saturation&#8315;Value (HSV) colorspace. The classification approach that gave the best performance, based on the <i>j</i>-index, was when an artificial neural network was utilized with near-infrared reflectance and HSV color as input data. Classification performance ranged from good to excellent, with values of Youden&#8217;s <i>j</i>-index ranging from 0.6 to 0.97 depending on flight date and site.https://www.mdpi.com/2072-4292/10/12/1918intertidalsedimentunmanned aerial systemsmultispectralartificial neural networkenvironmental impact assessment
collection DOAJ
language English
format Article
sources DOAJ
author Iain Fairley
Anouska Mendzil
Michael Togneri
Dominic E. Reeve
spellingShingle Iain Fairley
Anouska Mendzil
Michael Togneri
Dominic E. Reeve
The Use of Unmanned Aerial Systems to Map Intertidal Sediment
Remote Sensing
intertidal
sediment
unmanned aerial systems
multispectral
artificial neural network
environmental impact assessment
author_facet Iain Fairley
Anouska Mendzil
Michael Togneri
Dominic E. Reeve
author_sort Iain Fairley
title The Use of Unmanned Aerial Systems to Map Intertidal Sediment
title_short The Use of Unmanned Aerial Systems to Map Intertidal Sediment
title_full The Use of Unmanned Aerial Systems to Map Intertidal Sediment
title_fullStr The Use of Unmanned Aerial Systems to Map Intertidal Sediment
title_full_unstemmed The Use of Unmanned Aerial Systems to Map Intertidal Sediment
title_sort use of unmanned aerial systems to map intertidal sediment
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2018-11-01
description This paper describes a new methodology to map intertidal sediment using a commercially available unmanned aerial system (UAS). A fixed-wing UAS was flown with both thermal and multispectral cameras over three study sites comprising of sandy and muddy areas. Thermal signatures of sediment type were not observable in the recorded data and therefore only the multispectral results were used in the sediment classification. The multispectral camera consisted of a Red&#8315;Green&#8315;Blue (RGB) camera and four multispectral sensors covering the green, red, red edge and near-infrared bands. Statistically significant correlations (&gt;99%) were noted between the multispectral reflectance and both moisture content and median grain size. The best correlation against median grain size was found with the near-infrared band. Three classification methodologies were tested to split the intertidal area into sand and mud: k-means clustering, artificial neural networks, and the random forest approach. Classification methodologies were tested with nine input subsets of the available data channels, including transforming the RGB colorspace to the Hue&#8315;Saturation&#8315;Value (HSV) colorspace. The classification approach that gave the best performance, based on the <i>j</i>-index, was when an artificial neural network was utilized with near-infrared reflectance and HSV color as input data. Classification performance ranged from good to excellent, with values of Youden&#8217;s <i>j</i>-index ranging from 0.6 to 0.97 depending on flight date and site.
topic intertidal
sediment
unmanned aerial systems
multispectral
artificial neural network
environmental impact assessment
url https://www.mdpi.com/2072-4292/10/12/1918
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