Application of Deep Learning Architectures for Accurate Detection of Olive Tree Flowering Phenophase

The importance of monitoring and modelling the impact of climate change on crop phenology in a given ecosystem is ever-growing. For example, these procedures are useful when planning various processes that are important for plant protection. In order to proactively monitor the olive (<i>Olea e...

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Main Authors: Mario Milicevic, Krunoslav Zubrinic, Ivan Grbavac, Ines Obradovic
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/13/2120
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spelling doaj-37d49807593c49e1819dd469a8a1b30a2020-11-25T03:34:23ZengMDPI AGRemote Sensing2072-42922020-07-01122120212010.3390/rs12132120Application of Deep Learning Architectures for Accurate Detection of Olive Tree Flowering PhenophaseMario Milicevic0Krunoslav Zubrinic1Ivan Grbavac2Ines Obradovic3Department of Electrical Engineering and Computing, University of Dubrovnik, 20000 Dubrovnik, CroatiaDepartment of Electrical Engineering and Computing, University of Dubrovnik, 20000 Dubrovnik, CroatiaDepartment of Electrical Engineering and Computing, University of Dubrovnik, 20000 Dubrovnik, CroatiaDepartment of Electrical Engineering and Computing, University of Dubrovnik, 20000 Dubrovnik, CroatiaThe importance of monitoring and modelling the impact of climate change on crop phenology in a given ecosystem is ever-growing. For example, these procedures are useful when planning various processes that are important for plant protection. In order to proactively monitor the olive (<i>Olea europaea</i>)’s phenological response to changing environmental conditions, it is proposed to monitor the olive orchard with moving or stationary cameras, and to apply deep learning algorithms to track the timing of particular phenophases. The experiment conducted for this research showed that hardly perceivable transitions in phenophases can be accurately observed and detected, which is a presupposition for the effective implementation of integrated pest management (IPM). A number of different architectures and feature extraction approaches were compared. Ultimately, using a custom deep network and data augmentation technique during the deployment phase resulted in a fivefold cross-validation classification accuracy of 0.9720 ± 0.0057. This leads to the conclusion that a relatively simple custom network can prove to be the best solution for a specific problem, compared to more complex and very deep architectures.https://www.mdpi.com/2072-4292/12/13/2120deep learningconvolutional neural networkspattern recognitiondata augmentationolea europaeaintegrated pest management
collection DOAJ
language English
format Article
sources DOAJ
author Mario Milicevic
Krunoslav Zubrinic
Ivan Grbavac
Ines Obradovic
spellingShingle Mario Milicevic
Krunoslav Zubrinic
Ivan Grbavac
Ines Obradovic
Application of Deep Learning Architectures for Accurate Detection of Olive Tree Flowering Phenophase
Remote Sensing
deep learning
convolutional neural networks
pattern recognition
data augmentation
olea europaea
integrated pest management
author_facet Mario Milicevic
Krunoslav Zubrinic
Ivan Grbavac
Ines Obradovic
author_sort Mario Milicevic
title Application of Deep Learning Architectures for Accurate Detection of Olive Tree Flowering Phenophase
title_short Application of Deep Learning Architectures for Accurate Detection of Olive Tree Flowering Phenophase
title_full Application of Deep Learning Architectures for Accurate Detection of Olive Tree Flowering Phenophase
title_fullStr Application of Deep Learning Architectures for Accurate Detection of Olive Tree Flowering Phenophase
title_full_unstemmed Application of Deep Learning Architectures for Accurate Detection of Olive Tree Flowering Phenophase
title_sort application of deep learning architectures for accurate detection of olive tree flowering phenophase
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-07-01
description The importance of monitoring and modelling the impact of climate change on crop phenology in a given ecosystem is ever-growing. For example, these procedures are useful when planning various processes that are important for plant protection. In order to proactively monitor the olive (<i>Olea europaea</i>)’s phenological response to changing environmental conditions, it is proposed to monitor the olive orchard with moving or stationary cameras, and to apply deep learning algorithms to track the timing of particular phenophases. The experiment conducted for this research showed that hardly perceivable transitions in phenophases can be accurately observed and detected, which is a presupposition for the effective implementation of integrated pest management (IPM). A number of different architectures and feature extraction approaches were compared. Ultimately, using a custom deep network and data augmentation technique during the deployment phase resulted in a fivefold cross-validation classification accuracy of 0.9720 ± 0.0057. This leads to the conclusion that a relatively simple custom network can prove to be the best solution for a specific problem, compared to more complex and very deep architectures.
topic deep learning
convolutional neural networks
pattern recognition
data augmentation
olea europaea
integrated pest management
url https://www.mdpi.com/2072-4292/12/13/2120
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