Merging Unmanned Aerial Systems (UAS) Imagery and Echo Soundings with an Adaptive Sampling Technique for Bathymetric Surveys

Bathymetric surveying to gather information about depths and underwater terrain is increasingly important to the sciences of hydrology and geomorphology. Submerged terrain change detection, water level, and reservoir storage monitoring demand extensive bathymetric data. Despite often being scarce or...

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Main Authors: Laura V. Alvarez, Hernan A. Moreno, Antonio R. Segales, Tri G. Pham, Elizabeth A. Pillar-Little, Phillip B. Chilson
Format: Article
Language:English
Published: MDPI AG 2018-08-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/10/9/1362
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author Laura V. Alvarez
Hernan A. Moreno
Antonio R. Segales
Tri G. Pham
Elizabeth A. Pillar-Little
Phillip B. Chilson
author_facet Laura V. Alvarez
Hernan A. Moreno
Antonio R. Segales
Tri G. Pham
Elizabeth A. Pillar-Little
Phillip B. Chilson
author_sort Laura V. Alvarez
collection DOAJ
description Bathymetric surveying to gather information about depths and underwater terrain is increasingly important to the sciences of hydrology and geomorphology. Submerged terrain change detection, water level, and reservoir storage monitoring demand extensive bathymetric data. Despite often being scarce or unavailable, this information is fundamental to hydrodynamic modeling for imposing boundary conditions and building computational domains. In this manuscript, a novel, low-cost, rapid, and accurate method is developed to measure submerged topography, as an alternative to conventional approaches that require significant economic investments and human power. The method integrates two types of Unmanned Aerial Systems (UAS) sampling techniques. The first couples a small UAS (sUAS) to an echosounder attached to a miniaturized boat for surveying submerged topography in deeper water within the range of accuracy. The second uses Structure from Motion (SfM) photogrammetry to cover shallower water areas no detected by the echosounder where the bed is visible from the sUAS. The refraction of light passing through air–water interface is considered for improving the bathymetric results. A zonal adaptive sampling algorithm is developed and applied to the echosounder data to densify measurements where the standard deviation of clustered points is high. This method is tested at a small reservoir in the U.S. southern plains. Ground Control Points (GCPs) and checkpoints surveyed with a total station are used for properly georeferencing of the SfM photogrammetry and assessment of the UAS imagery accuracy. An independent validation procedure providing a number of skill and error metrics is conducted using ground-truth data collected with a leveling rod at co-located reservoir points. Assessment of the results shows a strong correlation between the echosounder, SfM measurements and the field observations. The final product is a hybrid bathymetric survey resulting from the merging of SfM photogrammetry and echosoundings within an adaptive sampling framework.
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spelling doaj.art-e29cba3b5f78470c9caf95b67ea555ec2022-12-21T19:42:17ZengMDPI AGRemote Sensing2072-42922018-08-01109136210.3390/rs10091362rs10091362Merging Unmanned Aerial Systems (UAS) Imagery and Echo Soundings with an Adaptive Sampling Technique for Bathymetric SurveysLaura V. Alvarez0Hernan A. Moreno1Antonio R. Segales2Tri G. Pham3Elizabeth A. Pillar-Little4Phillip B. Chilson5Center for Autonomous Sensing and Sampling, University of Oklahoma, Norman, OK 73072, USADepartment of Geography and Environmental Sustainability, University of Oklahoma, Norman, OK 73019, USACenter for Autonomous Sensing and Sampling, University of Oklahoma, Norman, OK 73072, USASchool of Civil Engineering and Environmental Science, University of Oklahoma, Norman, OK 73019, USACenter for Autonomous Sensing and Sampling, University of Oklahoma, Norman, OK 73072, USACenter for Autonomous Sensing and Sampling, University of Oklahoma, Norman, OK 73072, USABathymetric surveying to gather information about depths and underwater terrain is increasingly important to the sciences of hydrology and geomorphology. Submerged terrain change detection, water level, and reservoir storage monitoring demand extensive bathymetric data. Despite often being scarce or unavailable, this information is fundamental to hydrodynamic modeling for imposing boundary conditions and building computational domains. In this manuscript, a novel, low-cost, rapid, and accurate method is developed to measure submerged topography, as an alternative to conventional approaches that require significant economic investments and human power. The method integrates two types of Unmanned Aerial Systems (UAS) sampling techniques. The first couples a small UAS (sUAS) to an echosounder attached to a miniaturized boat for surveying submerged topography in deeper water within the range of accuracy. The second uses Structure from Motion (SfM) photogrammetry to cover shallower water areas no detected by the echosounder where the bed is visible from the sUAS. The refraction of light passing through air–water interface is considered for improving the bathymetric results. A zonal adaptive sampling algorithm is developed and applied to the echosounder data to densify measurements where the standard deviation of clustered points is high. This method is tested at a small reservoir in the U.S. southern plains. Ground Control Points (GCPs) and checkpoints surveyed with a total station are used for properly georeferencing of the SfM photogrammetry and assessment of the UAS imagery accuracy. An independent validation procedure providing a number of skill and error metrics is conducted using ground-truth data collected with a leveling rod at co-located reservoir points. Assessment of the results shows a strong correlation between the echosounder, SfM measurements and the field observations. The final product is a hybrid bathymetric survey resulting from the merging of SfM photogrammetry and echosoundings within an adaptive sampling framework.http://www.mdpi.com/2072-4292/10/9/1362unmanned aerial systemsbathymetryadaptive samplingstructure from motionecho soundinggeomorphologyhydrologyreservoirs
spellingShingle Laura V. Alvarez
Hernan A. Moreno
Antonio R. Segales
Tri G. Pham
Elizabeth A. Pillar-Little
Phillip B. Chilson
Merging Unmanned Aerial Systems (UAS) Imagery and Echo Soundings with an Adaptive Sampling Technique for Bathymetric Surveys
Remote Sensing
unmanned aerial systems
bathymetry
adaptive sampling
structure from motion
echo sounding
geomorphology
hydrology
reservoirs
title Merging Unmanned Aerial Systems (UAS) Imagery and Echo Soundings with an Adaptive Sampling Technique for Bathymetric Surveys
title_full Merging Unmanned Aerial Systems (UAS) Imagery and Echo Soundings with an Adaptive Sampling Technique for Bathymetric Surveys
title_fullStr Merging Unmanned Aerial Systems (UAS) Imagery and Echo Soundings with an Adaptive Sampling Technique for Bathymetric Surveys
title_full_unstemmed Merging Unmanned Aerial Systems (UAS) Imagery and Echo Soundings with an Adaptive Sampling Technique for Bathymetric Surveys
title_short Merging Unmanned Aerial Systems (UAS) Imagery and Echo Soundings with an Adaptive Sampling Technique for Bathymetric Surveys
title_sort merging unmanned aerial systems uas imagery and echo soundings with an adaptive sampling technique for bathymetric surveys
topic unmanned aerial systems
bathymetry
adaptive sampling
structure from motion
echo sounding
geomorphology
hydrology
reservoirs
url http://www.mdpi.com/2072-4292/10/9/1362
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