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Prediction of Antioxidant Activity of Cherry Fruits from UAS Multispectral Imagery Using Machine Learning

In this research, a model for the estimation of antioxidant content in cherry fruits from multispectral imagery acquired from drones was developed, based on machine learning methods. For two consecutive cultivation years, the trees were sampled on different dates and then analysed for their fruits’...

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Autores principales: Karydas, Christos, Iatrou, Miltiadis, Kouretas, Dimitrios, Patouna, Anastasia, Iatrou, George, Lazos, Nikolaos, Gewehr, Sandra, Tseni, Xanthi, Tekos, Fotis, Zartaloudis, Zois, Mainos, Evangelos, Mourelatos, Spiros
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7070805/
https://www.ncbi.nlm.nih.gov/pubmed/32075036
http://dx.doi.org/10.3390/antiox9020156
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author Karydas, Christos
Iatrou, Miltiadis
Kouretas, Dimitrios
Patouna, Anastasia
Iatrou, George
Lazos, Nikolaos
Gewehr, Sandra
Tseni, Xanthi
Tekos, Fotis
Zartaloudis, Zois
Mainos, Evangelos
Mourelatos, Spiros
author_facet Karydas, Christos
Iatrou, Miltiadis
Kouretas, Dimitrios
Patouna, Anastasia
Iatrou, George
Lazos, Nikolaos
Gewehr, Sandra
Tseni, Xanthi
Tekos, Fotis
Zartaloudis, Zois
Mainos, Evangelos
Mourelatos, Spiros
author_sort Karydas, Christos
collection PubMed
description In this research, a model for the estimation of antioxidant content in cherry fruits from multispectral imagery acquired from drones was developed, based on machine learning methods. For two consecutive cultivation years, the trees were sampled on different dates and then analysed for their fruits’ radical scavenging activity (DPPH) and Folin–Ciocalteu (FCR) reducing capacity. Multispectral images from unmanned aerial vehicles were acquired on the same dates with fruit sampling. Soil samples were collected throughout the study fields at the end of the season. Topographic, hydrographic and weather data also were included in modelling. First-year data were used for model-fitting, whereas second-year data for testing. Spatial autocorrelation tests indicated unbiased sampling and, moreover, allowed restriction of modelling input parameters to a smaller group. The optimum model employs 24 input variables resulting in a 6.74 root mean square error. Provided that soil profiles and other ancillary data are known in advance of the cultivation season, capturing drone images in critical growth phases, together with contemporary weather data, can support site- and time-specific harvesting. It could also support site-specific treatments (precision farming) for improving fruit quality in the long-term, with analogous marketing perspectives.
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spelling pubmed-70708052020-03-19 Prediction of Antioxidant Activity of Cherry Fruits from UAS Multispectral Imagery Using Machine Learning Karydas, Christos Iatrou, Miltiadis Kouretas, Dimitrios Patouna, Anastasia Iatrou, George Lazos, Nikolaos Gewehr, Sandra Tseni, Xanthi Tekos, Fotis Zartaloudis, Zois Mainos, Evangelos Mourelatos, Spiros Antioxidants (Basel) Article In this research, a model for the estimation of antioxidant content in cherry fruits from multispectral imagery acquired from drones was developed, based on machine learning methods. For two consecutive cultivation years, the trees were sampled on different dates and then analysed for their fruits’ radical scavenging activity (DPPH) and Folin–Ciocalteu (FCR) reducing capacity. Multispectral images from unmanned aerial vehicles were acquired on the same dates with fruit sampling. Soil samples were collected throughout the study fields at the end of the season. Topographic, hydrographic and weather data also were included in modelling. First-year data were used for model-fitting, whereas second-year data for testing. Spatial autocorrelation tests indicated unbiased sampling and, moreover, allowed restriction of modelling input parameters to a smaller group. The optimum model employs 24 input variables resulting in a 6.74 root mean square error. Provided that soil profiles and other ancillary data are known in advance of the cultivation season, capturing drone images in critical growth phases, together with contemporary weather data, can support site- and time-specific harvesting. It could also support site-specific treatments (precision farming) for improving fruit quality in the long-term, with analogous marketing perspectives. MDPI 2020-02-14 /pmc/articles/PMC7070805/ /pubmed/32075036 http://dx.doi.org/10.3390/antiox9020156 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Karydas, Christos
Iatrou, Miltiadis
Kouretas, Dimitrios
Patouna, Anastasia
Iatrou, George
Lazos, Nikolaos
Gewehr, Sandra
Tseni, Xanthi
Tekos, Fotis
Zartaloudis, Zois
Mainos, Evangelos
Mourelatos, Spiros
Prediction of Antioxidant Activity of Cherry Fruits from UAS Multispectral Imagery Using Machine Learning
title Prediction of Antioxidant Activity of Cherry Fruits from UAS Multispectral Imagery Using Machine Learning
title_full Prediction of Antioxidant Activity of Cherry Fruits from UAS Multispectral Imagery Using Machine Learning
title_fullStr Prediction of Antioxidant Activity of Cherry Fruits from UAS Multispectral Imagery Using Machine Learning
title_full_unstemmed Prediction of Antioxidant Activity of Cherry Fruits from UAS Multispectral Imagery Using Machine Learning
title_short Prediction of Antioxidant Activity of Cherry Fruits from UAS Multispectral Imagery Using Machine Learning
title_sort prediction of antioxidant activity of cherry fruits from uas multispectral imagery using machine learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7070805/
https://www.ncbi.nlm.nih.gov/pubmed/32075036
http://dx.doi.org/10.3390/antiox9020156
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