Simulating an Autonomously Operating Low-Cost Static Terrestrial LiDAR for Multitemporal Maize Crop Height Measurements

In order to optimize agricultural processes, near real-time spatial information about in-field variations, such as crop height development (i.e., changes over time), is indispensable. This development can be captured with a LiDAR system. However, its applicability in precision agriculture is often h...

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Main Authors: Sophie Crommelinck, Bernhard Höfle
Format: Article
Language:English
Published: MDPI AG 2016-03-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/8/3/205
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spelling doaj-7852585bd23e43368382dab3170808762020-11-24T20:50:06ZengMDPI AGRemote Sensing2072-42922016-03-018320510.3390/rs8030205rs8030205Simulating an Autonomously Operating Low-Cost Static Terrestrial LiDAR for Multitemporal Maize Crop Height MeasurementsSophie Crommelinck0Bernhard Höfle1GIScience Research Group, Institute of Geography, Heidelberg University, Heidelberg 69120, GermanyGIScience Research Group, Institute of Geography, Heidelberg University, Heidelberg 69120, GermanyIn order to optimize agricultural processes, near real-time spatial information about in-field variations, such as crop height development (i.e., changes over time), is indispensable. This development can be captured with a LiDAR system. However, its applicability in precision agriculture is often hindered due to high costs and unstandardized processing methods. This study investigates the potential of an autonomously operating low-cost static terrestrial laser scanner (TLS) for multitemporal height monitoring of maize crops. A low-cost system is simulated by artificially reducing the point density of data captured during eight different campaigns. The data were used to derive and assess crop height models (CHM). Results show that heights calculated with CHM based on the unreduced point cloud are accurate when compared to manually measured heights (mean deviation = 0.02 m, standard deviation = 0.15 m, root mean square error (RMSE) = 0.16 m). When reducing the point cloud to 2% of its original size to simulate a low-cost system, this difference increases (mean deviation = 0.12 m, standard deviation = 0.19 m, RMSE = 0.22 m). We found that applying the simulated low-cost TLS system in precision agriculture is possible with acceptable accuracy up to an angular scan resolution of 8 mrad (i.e., point spacing of 80 mm at 10 m distance). General guidelines for the measurement set-up and an automatically executable method for CHM generation and assessment are provided and deserve consideration in further studies.http://www.mdpi.com/2072-4292/8/3/205precision agriculturemultitemporallow-cost LiDARATLScrop monitoringcrop surface models
collection DOAJ
language English
format Article
sources DOAJ
author Sophie Crommelinck
Bernhard Höfle
spellingShingle Sophie Crommelinck
Bernhard Höfle
Simulating an Autonomously Operating Low-Cost Static Terrestrial LiDAR for Multitemporal Maize Crop Height Measurements
Remote Sensing
precision agriculture
multitemporal
low-cost LiDAR
ATLS
crop monitoring
crop surface models
author_facet Sophie Crommelinck
Bernhard Höfle
author_sort Sophie Crommelinck
title Simulating an Autonomously Operating Low-Cost Static Terrestrial LiDAR for Multitemporal Maize Crop Height Measurements
title_short Simulating an Autonomously Operating Low-Cost Static Terrestrial LiDAR for Multitemporal Maize Crop Height Measurements
title_full Simulating an Autonomously Operating Low-Cost Static Terrestrial LiDAR for Multitemporal Maize Crop Height Measurements
title_fullStr Simulating an Autonomously Operating Low-Cost Static Terrestrial LiDAR for Multitemporal Maize Crop Height Measurements
title_full_unstemmed Simulating an Autonomously Operating Low-Cost Static Terrestrial LiDAR for Multitemporal Maize Crop Height Measurements
title_sort simulating an autonomously operating low-cost static terrestrial lidar for multitemporal maize crop height measurements
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2016-03-01
description In order to optimize agricultural processes, near real-time spatial information about in-field variations, such as crop height development (i.e., changes over time), is indispensable. This development can be captured with a LiDAR system. However, its applicability in precision agriculture is often hindered due to high costs and unstandardized processing methods. This study investigates the potential of an autonomously operating low-cost static terrestrial laser scanner (TLS) for multitemporal height monitoring of maize crops. A low-cost system is simulated by artificially reducing the point density of data captured during eight different campaigns. The data were used to derive and assess crop height models (CHM). Results show that heights calculated with CHM based on the unreduced point cloud are accurate when compared to manually measured heights (mean deviation = 0.02 m, standard deviation = 0.15 m, root mean square error (RMSE) = 0.16 m). When reducing the point cloud to 2% of its original size to simulate a low-cost system, this difference increases (mean deviation = 0.12 m, standard deviation = 0.19 m, RMSE = 0.22 m). We found that applying the simulated low-cost TLS system in precision agriculture is possible with acceptable accuracy up to an angular scan resolution of 8 mrad (i.e., point spacing of 80 mm at 10 m distance). General guidelines for the measurement set-up and an automatically executable method for CHM generation and assessment are provided and deserve consideration in further studies.
topic precision agriculture
multitemporal
low-cost LiDAR
ATLS
crop monitoring
crop surface models
url http://www.mdpi.com/2072-4292/8/3/205
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AT bernhardhofle simulatinganautonomouslyoperatinglowcoststaticterrestriallidarformultitemporalmaizecropheightmeasurements
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