Mango Yield Mapping at the Orchard Scale Based on Tree Structure and Land Cover Assessed by UAV

In the value chain, yields are key information for both growers and other stakeholders in market supply and exports. However, orchard yields are often still based on an extrapolation of tree production which is visually assessed on a limited number of trees; a tedious and inaccurate task that gives...

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Main Authors: Julien Sarron, Éric Malézieux, Cheikh Amet Bassirou Sané, Émile Faye
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/10/12/1900
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spelling doaj-59ec54f62e0341b7aa4a2a8abe63d5702020-11-25T00:13:23ZengMDPI AGRemote Sensing2072-42922018-11-011012190010.3390/rs10121900rs10121900Mango Yield Mapping at the Orchard Scale Based on Tree Structure and Land Cover Assessed by UAVJulien Sarron0Éric Malézieux1Cheikh Amet Bassirou Sané2Émile Faye3CIRAD, UPR HortSys, F-34398 Montpellier, FranceCIRAD, UPR HortSys, F-34398 Montpellier, FranceUniversité Cheikh Anta Diop (UCAD), Fac. Sci. Tech., Dakar BP 5005, SenegalCIRAD, UPR HortSys, F-34398 Montpellier, FranceIn the value chain, yields are key information for both growers and other stakeholders in market supply and exports. However, orchard yields are often still based on an extrapolation of tree production which is visually assessed on a limited number of trees; a tedious and inaccurate task that gives no yield information at a finer scale than the orchard plot. In this work, we propose a method to accurately map individual tree production at the orchard scale by developing a trade-off methodology between mechanistic yield modelling and extensive fruit counting using machine vision systems. A methodological toolbox was developed and tested to estimate and map tree species, structure, and yields in mango orchards of various cropping systems (from monocultivar to plurispecific orchards) in the Niayes region, West Senegal. Tree structure parameters (height, crown area and volume), species, and mango cultivars were measured using unmanned aerial vehicle (UAV) photogrammetry and geographic, object-based image analysis. This procedure reached an average overall accuracy of 0.89 for classifying tree species and mango cultivars. Tree structure parameters combined with a fruit load index, which takes into account year and management effects, were implemented in predictive production models of three mango cultivars. Models reached satisfying accuracies with R<sup>2</sup> greater than 0.77 and RMSE% ranging from 20% to 29% when evaluated with the measured production of 60 validation trees. In 2017, this methodology was applied to 15 orchards overflown by UAV, and estimated yields were compared to those measured by the growers for six of them, showing the proper efficiency of our technology. The proposed method achieved the breakthrough of rapidly and precisely mapping mango yields without detecting fruits from ground imagery, but rather, by linking yields with tree structural parameters. Such a tool will provide growers with accurate yield estimations at the orchard scale, and will permit them to study the parameters that drive yield heterogeneity within and between orchards.https://www.mdpi.com/2072-4292/10/12/1900unmanned aerial vehiclemango orchardyield estimationfruit detectiontree architecturerandom forestGEOBIAstructure-from-motion
collection DOAJ
language English
format Article
sources DOAJ
author Julien Sarron
Éric Malézieux
Cheikh Amet Bassirou Sané
Émile Faye
spellingShingle Julien Sarron
Éric Malézieux
Cheikh Amet Bassirou Sané
Émile Faye
Mango Yield Mapping at the Orchard Scale Based on Tree Structure and Land Cover Assessed by UAV
Remote Sensing
unmanned aerial vehicle
mango orchard
yield estimation
fruit detection
tree architecture
random forest
GEOBIA
structure-from-motion
author_facet Julien Sarron
Éric Malézieux
Cheikh Amet Bassirou Sané
Émile Faye
author_sort Julien Sarron
title Mango Yield Mapping at the Orchard Scale Based on Tree Structure and Land Cover Assessed by UAV
title_short Mango Yield Mapping at the Orchard Scale Based on Tree Structure and Land Cover Assessed by UAV
title_full Mango Yield Mapping at the Orchard Scale Based on Tree Structure and Land Cover Assessed by UAV
title_fullStr Mango Yield Mapping at the Orchard Scale Based on Tree Structure and Land Cover Assessed by UAV
title_full_unstemmed Mango Yield Mapping at the Orchard Scale Based on Tree Structure and Land Cover Assessed by UAV
title_sort mango yield mapping at the orchard scale based on tree structure and land cover assessed by uav
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2018-11-01
description In the value chain, yields are key information for both growers and other stakeholders in market supply and exports. However, orchard yields are often still based on an extrapolation of tree production which is visually assessed on a limited number of trees; a tedious and inaccurate task that gives no yield information at a finer scale than the orchard plot. In this work, we propose a method to accurately map individual tree production at the orchard scale by developing a trade-off methodology between mechanistic yield modelling and extensive fruit counting using machine vision systems. A methodological toolbox was developed and tested to estimate and map tree species, structure, and yields in mango orchards of various cropping systems (from monocultivar to plurispecific orchards) in the Niayes region, West Senegal. Tree structure parameters (height, crown area and volume), species, and mango cultivars were measured using unmanned aerial vehicle (UAV) photogrammetry and geographic, object-based image analysis. This procedure reached an average overall accuracy of 0.89 for classifying tree species and mango cultivars. Tree structure parameters combined with a fruit load index, which takes into account year and management effects, were implemented in predictive production models of three mango cultivars. Models reached satisfying accuracies with R<sup>2</sup> greater than 0.77 and RMSE% ranging from 20% to 29% when evaluated with the measured production of 60 validation trees. In 2017, this methodology was applied to 15 orchards overflown by UAV, and estimated yields were compared to those measured by the growers for six of them, showing the proper efficiency of our technology. The proposed method achieved the breakthrough of rapidly and precisely mapping mango yields without detecting fruits from ground imagery, but rather, by linking yields with tree structural parameters. Such a tool will provide growers with accurate yield estimations at the orchard scale, and will permit them to study the parameters that drive yield heterogeneity within and between orchards.
topic unmanned aerial vehicle
mango orchard
yield estimation
fruit detection
tree architecture
random forest
GEOBIA
structure-from-motion
url https://www.mdpi.com/2072-4292/10/12/1900
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