Unmanned aerial vehicle and proximal sensing of vegetation indices in olive tree (<i>Olea europaea</i>)

Remote and proximal sensing platforms at the service of precision olive growing are bringing new development possibilities to the sector. A proximal sensing platform is close to the vegetation, while a remote sensing platform, such as unmanned aerial vehicle (UAV), is more distant but has the advan...

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Main Authors: Eliseo Roma, Pietro Catania, Mariangela Vallone, Santo Orlando
Format: Article
Language:English
Published: PAGEPress Publications 2023-10-01
Series:Journal of Agricultural Engineering
Subjects:
Online Access:https://www.agroengineering.org/index.php/jae/article/view/1536
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author Eliseo Roma
Pietro Catania
Mariangela Vallone
Santo Orlando
author_facet Eliseo Roma
Pietro Catania
Mariangela Vallone
Santo Orlando
author_sort Eliseo Roma
collection DOAJ
description Remote and proximal sensing platforms at the service of precision olive growing are bringing new development possibilities to the sector. A proximal sensing platform is close to the vegetation, while a remote sensing platform, such as unmanned aerial vehicle (UAV), is more distant but has the advantage of rapidity to investigate plots. The study aims to compare multispectral and hyperspectral data acquired with remote and proximal sensing platforms. The comparison between the two sensors aims at understanding the different responses their use can provide on a crop, such as olive trees having a complex canopy. The multispectral data were acquired with a DJI multispectral camera mounted on the UAV Phantom 4. Hyperspectral acquisitions were carried out with a FieldSpec® HandHeld 2™ Spectroradiometer in the canopy portions exposed to South, East, West, and North. The multispectral images were processed with Geographic Information System software to extrapolate spectral information for each cardinal direction’s exposure. The three main Vegetation indices were used: normalized difference vegetation index (NDVI), normalized difference red-edge index (NDRE), and modified soil adjusted vegetation index (MSAVI). Multispectral data could describe the total variability of the whole plot differentiating each single plant status. Hyperspectral data were able to describe vegetation conditions more accurately; they appeared to be related to the cardinal exposure. MSAVI, NDVI, and NDRE showed correlation r =0.63**, 0.69**, and 0.74**, respectively, between multispectral and hyperspectral data. South and West exposures showed the best correlations with both platforms.
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spelling doaj.art-d501baed47ee4e1f9ba3b264ece4c1422023-10-12T20:06:36ZengPAGEPress PublicationsJournal of Agricultural Engineering1974-70712239-62682023-10-0154310.4081/jae.2023.1536Unmanned aerial vehicle and proximal sensing of vegetation indices in olive tree (<i>Olea europaea</i>)Eliseo Roma0Pietro Catania1Mariangela Vallone2Santo Orlando3Department of Agricultural, Food and Forest Sciences, University of PalermoDepartment of Agricultural, Food and Forest Sciences, University of PalermoDepartment of Agricultural, Food and Forest Sciences, University of PalermoDepartment of Agricultural, Food and Forest Sciences, University of Palermo Remote and proximal sensing platforms at the service of precision olive growing are bringing new development possibilities to the sector. A proximal sensing platform is close to the vegetation, while a remote sensing platform, such as unmanned aerial vehicle (UAV), is more distant but has the advantage of rapidity to investigate plots. The study aims to compare multispectral and hyperspectral data acquired with remote and proximal sensing platforms. The comparison between the two sensors aims at understanding the different responses their use can provide on a crop, such as olive trees having a complex canopy. The multispectral data were acquired with a DJI multispectral camera mounted on the UAV Phantom 4. Hyperspectral acquisitions were carried out with a FieldSpec® HandHeld 2™ Spectroradiometer in the canopy portions exposed to South, East, West, and North. The multispectral images were processed with Geographic Information System software to extrapolate spectral information for each cardinal direction’s exposure. The three main Vegetation indices were used: normalized difference vegetation index (NDVI), normalized difference red-edge index (NDRE), and modified soil adjusted vegetation index (MSAVI). Multispectral data could describe the total variability of the whole plot differentiating each single plant status. Hyperspectral data were able to describe vegetation conditions more accurately; they appeared to be related to the cardinal exposure. MSAVI, NDVI, and NDRE showed correlation r =0.63**, 0.69**, and 0.74**, respectively, between multispectral and hyperspectral data. South and West exposures showed the best correlations with both platforms. https://www.agroengineering.org/index.php/jae/article/view/1536CanopyNDVIMSAVINDREspectroradiometer
spellingShingle Eliseo Roma
Pietro Catania
Mariangela Vallone
Santo Orlando
Unmanned aerial vehicle and proximal sensing of vegetation indices in olive tree (<i>Olea europaea</i>)
Journal of Agricultural Engineering
Canopy
NDVI
MSAVI
NDRE
spectroradiometer
title Unmanned aerial vehicle and proximal sensing of vegetation indices in olive tree (<i>Olea europaea</i>)
title_full Unmanned aerial vehicle and proximal sensing of vegetation indices in olive tree (<i>Olea europaea</i>)
title_fullStr Unmanned aerial vehicle and proximal sensing of vegetation indices in olive tree (<i>Olea europaea</i>)
title_full_unstemmed Unmanned aerial vehicle and proximal sensing of vegetation indices in olive tree (<i>Olea europaea</i>)
title_short Unmanned aerial vehicle and proximal sensing of vegetation indices in olive tree (<i>Olea europaea</i>)
title_sort unmanned aerial vehicle and proximal sensing of vegetation indices in olive tree i olea europaea i
topic Canopy
NDVI
MSAVI
NDRE
spectroradiometer
url https://www.agroengineering.org/index.php/jae/article/view/1536
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