Incorporating Surface Elevation Information in UAV Multispectral Images for Mapping Weed Patches

Accurate mapping of weed distribution within a field is a first step towards effective weed management. The aim of this work was to improve the mapping of milk thistle (<i>Silybum marianum</i>) weed patches through unmanned aerial vehicle (UAV) images using auxiliary layers of informatio...

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Main Authors: Theodota Zisi, Thomas K. Alexandridis, Spyridon Kaplanis, Ioannis Navrozidis, Afroditi-Alexandra Tamouridou, Anastasia Lagopodi, Dimitrios Moshou, Vasilios Polychronos
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Journal of Imaging
Subjects:
Online Access:https://www.mdpi.com/2313-433X/4/11/132
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spelling doaj-66b45578af344fa9963b4f207656e75a2020-11-24T21:46:37ZengMDPI AGJournal of Imaging2313-433X2018-11-0141113210.3390/jimaging4110132jimaging4110132Incorporating Surface Elevation Information in UAV Multispectral Images for Mapping Weed PatchesTheodota Zisi0Thomas K. Alexandridis1Spyridon Kaplanis2Ioannis Navrozidis3Afroditi-Alexandra Tamouridou4Anastasia Lagopodi5Dimitrios Moshou6Vasilios Polychronos7Laboratory of Remote Sensing, Faculty of Agriculture, Aristotle University of Thessaloniki, Spectroscopy and GIS, 541 24 Thessaloniki, GreeceLaboratory of Remote Sensing, Faculty of Agriculture, Aristotle University of Thessaloniki, Spectroscopy and GIS, 541 24 Thessaloniki, GreeceLaboratory of Remote Sensing, Faculty of Agriculture, Aristotle University of Thessaloniki, Spectroscopy and GIS, 541 24 Thessaloniki, GreeceLaboratory of Remote Sensing, Faculty of Agriculture, Aristotle University of Thessaloniki, Spectroscopy and GIS, 541 24 Thessaloniki, GreeceLaboratory of Agricultural Engineering, Faculty of Agriculture, Aristotle University of Thessaloniki, 541 24 Thessaloniki, GreeceLaboratory of Phytopathology, Faculty of Agriculture, Aristotle University of Thessaloniki, 541 24 Thessaloniki, GreeceLaboratory of Agricultural Engineering, Faculty of Agriculture, Aristotle University of Thessaloniki, 541 24 Thessaloniki, GreeceGeosense S.A., Filikis Etairias 15-17, Pylaia, 555 35 Thessaloniki, GreeceAccurate mapping of weed distribution within a field is a first step towards effective weed management. The aim of this work was to improve the mapping of milk thistle (<i>Silybum marianum</i>) weed patches through unmanned aerial vehicle (UAV) images using auxiliary layers of information, such as spatial texture and estimated vegetation height from the UAV digital surface model. UAV multispectral images acquired in the visible and near-infrared parts of the spectrum were used as the main source of data, together with texture that was estimated for the image bands using a local variance filter. The digital surface model was created from structure from motion algorithms using the UAV image stereopairs. From this layer, the terrain elevation was estimated using a focal minimum filter followed by a low-pass filter. The plant height was computed by subtracting the terrain elevation from the digital surface model. Three classification algorithms (maximum likelihood, minimum distance and an object-based image classifier) were used to identify <i>S. marianum</i> from other vegetation using various combinations of inputs: image bands, texture and plant height. The resulting weed distribution maps were evaluated for their accuracy using field-surveyed data. Both texture and plant height have helped improve the accuracy of classification of <i>S. marianum</i> weed, increasing the overall accuracy of classification from 70% to 87% in 2015, and from 82% to 95% in 2016. Thus, as texture is easier to compute than plant height from a digital surface model, it may be preferable to be used in future weed mapping applications.https://www.mdpi.com/2313-433X/4/11/132milk thistleprecision farmingdigital surface modelplant heighttextureSf structure from motion
collection DOAJ
language English
format Article
sources DOAJ
author Theodota Zisi
Thomas K. Alexandridis
Spyridon Kaplanis
Ioannis Navrozidis
Afroditi-Alexandra Tamouridou
Anastasia Lagopodi
Dimitrios Moshou
Vasilios Polychronos
spellingShingle Theodota Zisi
Thomas K. Alexandridis
Spyridon Kaplanis
Ioannis Navrozidis
Afroditi-Alexandra Tamouridou
Anastasia Lagopodi
Dimitrios Moshou
Vasilios Polychronos
Incorporating Surface Elevation Information in UAV Multispectral Images for Mapping Weed Patches
Journal of Imaging
milk thistle
precision farming
digital surface model
plant height
texture
Sf structure from motion
author_facet Theodota Zisi
Thomas K. Alexandridis
Spyridon Kaplanis
Ioannis Navrozidis
Afroditi-Alexandra Tamouridou
Anastasia Lagopodi
Dimitrios Moshou
Vasilios Polychronos
author_sort Theodota Zisi
title Incorporating Surface Elevation Information in UAV Multispectral Images for Mapping Weed Patches
title_short Incorporating Surface Elevation Information in UAV Multispectral Images for Mapping Weed Patches
title_full Incorporating Surface Elevation Information in UAV Multispectral Images for Mapping Weed Patches
title_fullStr Incorporating Surface Elevation Information in UAV Multispectral Images for Mapping Weed Patches
title_full_unstemmed Incorporating Surface Elevation Information in UAV Multispectral Images for Mapping Weed Patches
title_sort incorporating surface elevation information in uav multispectral images for mapping weed patches
publisher MDPI AG
series Journal of Imaging
issn 2313-433X
publishDate 2018-11-01
description Accurate mapping of weed distribution within a field is a first step towards effective weed management. The aim of this work was to improve the mapping of milk thistle (<i>Silybum marianum</i>) weed patches through unmanned aerial vehicle (UAV) images using auxiliary layers of information, such as spatial texture and estimated vegetation height from the UAV digital surface model. UAV multispectral images acquired in the visible and near-infrared parts of the spectrum were used as the main source of data, together with texture that was estimated for the image bands using a local variance filter. The digital surface model was created from structure from motion algorithms using the UAV image stereopairs. From this layer, the terrain elevation was estimated using a focal minimum filter followed by a low-pass filter. The plant height was computed by subtracting the terrain elevation from the digital surface model. Three classification algorithms (maximum likelihood, minimum distance and an object-based image classifier) were used to identify <i>S. marianum</i> from other vegetation using various combinations of inputs: image bands, texture and plant height. The resulting weed distribution maps were evaluated for their accuracy using field-surveyed data. Both texture and plant height have helped improve the accuracy of classification of <i>S. marianum</i> weed, increasing the overall accuracy of classification from 70% to 87% in 2015, and from 82% to 95% in 2016. Thus, as texture is easier to compute than plant height from a digital surface model, it may be preferable to be used in future weed mapping applications.
topic milk thistle
precision farming
digital surface model
plant height
texture
Sf structure from motion
url https://www.mdpi.com/2313-433X/4/11/132
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