Sensor Pods: Multi-Resolution Surveys from a Light Aircraft

Airborne remote sensing, whether performed from conventional aerial survey platforms such as light aircraft or the more recent Remotely Piloted Airborne Systems (RPAS) has the ability to compliment mapping generated using earth-orbiting satellites, particularly for areas that may experience prolonge...

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Main Authors: Conor Cahalane, Daire Walsh, Aidan Magee, Sean Mannion, Paul Lewis, Tim McCarthy
Format: Article
Language:English
Published: MDPI AG 2017-02-01
Series:Inventions
Subjects:
RGB
UAV
Online Access:http://www.mdpi.com/2411-5134/2/1/2
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spelling doaj-f17d4f5ab89f48c0a630b7a163a839ed2020-11-24T21:12:15ZengMDPI AGInventions2411-51342017-02-0121210.3390/inventions2010002inventions2010002Sensor Pods: Multi-Resolution Surveys from a Light AircraftConor Cahalane0Daire Walsh1Aidan Magee2Sean Mannion3Paul Lewis4Tim McCarthy5National Centre for Geocomputation, Iontas, North Campus, Maynooth University, Maynooth, Co. Kildare, IrelandNational Centre for Geocomputation, Iontas, North Campus, Maynooth University, Maynooth, Co. Kildare, IrelandNational Centre for Geocomputation, Iontas, North Campus, Maynooth University, Maynooth, Co. Kildare, IrelandAir Survey, Abbeyshrule Airport, Abbeyshrule, Co. Longford, IrelandNational Centre for Geocomputation, Iontas, North Campus, Maynooth University, Maynooth, Co. Kildare, IrelandNational Centre for Geocomputation, Iontas, North Campus, Maynooth University, Maynooth, Co. Kildare, IrelandAirborne remote sensing, whether performed from conventional aerial survey platforms such as light aircraft or the more recent Remotely Piloted Airborne Systems (RPAS) has the ability to compliment mapping generated using earth-orbiting satellites, particularly for areas that may experience prolonged cloud cover. Traditional aerial platforms are costly but capture spectral resolution imagery over large areas. RPAS are relatively low-cost, and provide very-high resolution imagery but this is limited to small areas. We believe that we are the first group to retrofit these new, low-cost, lightweight sensors in a traditional aircraft. Unlike RPAS surveys which have a limited payload, this is the first time that a method has been designed to operate four distinct RPAS sensors simultaneously—hyperspectral, thermal, hyper, RGB, video. This means that imagery covering a broad range of the spectrum captured during a single survey, through different imaging capture techniques (frame, pushbroom, video) can be applied to investigate different multiple aspects of the surrounding environment such as, soil moisture, vegetation vitality, topography or drainage, etc. In this paper, we present the initial results validating our innovative hybrid system adapting dedicated RPAS sensors for a light aircraft sensor pod, thereby providing the benefits of both methodologies. Simultaneous image capture with a Nikon D800E SLR and a series of dedicated RPAS sensors, including a FLIR thermal imager, a four-band multispectral camera and a 100-band hyperspectral imager was enabled by integration in a single sensor pod operating from a Cessna c172. However, to enable accurate sensor fusion for image analysis, each sensor must first be combined in a common vehicle coordinate system and a method for triggering, time-stamping and calculating the position/pose of each sensor at the time of image capture devised. Initial tests were carried out over agricultural regions with geometric tests designed to assess the spatial accuracy of the fused imagery in terms of its absolute and relative accuracy. The results demonstrate that by using our innovative system, images captured simultaneously by the four sensors could be geometrically corrected successfully and then co-registered and fused exhibiting a root-mean-square error (RMSE) of approximately 10m independent of inertial measurements and ground control.http://www.mdpi.com/2411-5134/2/1/2hyperspectralmultispectralthermalRGBorthophotoRPASUAVsensor podimage fusionremote sensinglight aircraft
collection DOAJ
language English
format Article
sources DOAJ
author Conor Cahalane
Daire Walsh
Aidan Magee
Sean Mannion
Paul Lewis
Tim McCarthy
spellingShingle Conor Cahalane
Daire Walsh
Aidan Magee
Sean Mannion
Paul Lewis
Tim McCarthy
Sensor Pods: Multi-Resolution Surveys from a Light Aircraft
Inventions
hyperspectral
multispectral
thermal
RGB
orthophoto
RPAS
UAV
sensor pod
image fusion
remote sensing
light aircraft
author_facet Conor Cahalane
Daire Walsh
Aidan Magee
Sean Mannion
Paul Lewis
Tim McCarthy
author_sort Conor Cahalane
title Sensor Pods: Multi-Resolution Surveys from a Light Aircraft
title_short Sensor Pods: Multi-Resolution Surveys from a Light Aircraft
title_full Sensor Pods: Multi-Resolution Surveys from a Light Aircraft
title_fullStr Sensor Pods: Multi-Resolution Surveys from a Light Aircraft
title_full_unstemmed Sensor Pods: Multi-Resolution Surveys from a Light Aircraft
title_sort sensor pods: multi-resolution surveys from a light aircraft
publisher MDPI AG
series Inventions
issn 2411-5134
publishDate 2017-02-01
description Airborne remote sensing, whether performed from conventional aerial survey platforms such as light aircraft or the more recent Remotely Piloted Airborne Systems (RPAS) has the ability to compliment mapping generated using earth-orbiting satellites, particularly for areas that may experience prolonged cloud cover. Traditional aerial platforms are costly but capture spectral resolution imagery over large areas. RPAS are relatively low-cost, and provide very-high resolution imagery but this is limited to small areas. We believe that we are the first group to retrofit these new, low-cost, lightweight sensors in a traditional aircraft. Unlike RPAS surveys which have a limited payload, this is the first time that a method has been designed to operate four distinct RPAS sensors simultaneously—hyperspectral, thermal, hyper, RGB, video. This means that imagery covering a broad range of the spectrum captured during a single survey, through different imaging capture techniques (frame, pushbroom, video) can be applied to investigate different multiple aspects of the surrounding environment such as, soil moisture, vegetation vitality, topography or drainage, etc. In this paper, we present the initial results validating our innovative hybrid system adapting dedicated RPAS sensors for a light aircraft sensor pod, thereby providing the benefits of both methodologies. Simultaneous image capture with a Nikon D800E SLR and a series of dedicated RPAS sensors, including a FLIR thermal imager, a four-band multispectral camera and a 100-band hyperspectral imager was enabled by integration in a single sensor pod operating from a Cessna c172. However, to enable accurate sensor fusion for image analysis, each sensor must first be combined in a common vehicle coordinate system and a method for triggering, time-stamping and calculating the position/pose of each sensor at the time of image capture devised. Initial tests were carried out over agricultural regions with geometric tests designed to assess the spatial accuracy of the fused imagery in terms of its absolute and relative accuracy. The results demonstrate that by using our innovative system, images captured simultaneously by the four sensors could be geometrically corrected successfully and then co-registered and fused exhibiting a root-mean-square error (RMSE) of approximately 10m independent of inertial measurements and ground control.
topic hyperspectral
multispectral
thermal
RGB
orthophoto
RPAS
UAV
sensor pod
image fusion
remote sensing
light aircraft
url http://www.mdpi.com/2411-5134/2/1/2
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AT seanmannion sensorpodsmultiresolutionsurveysfromalightaircraft
AT paullewis sensorpodsmultiresolutionsurveysfromalightaircraft
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