Real-time assessment of plant photosynthetic pigment contents with an artificial intelligence approach in a mobile application

The assessment of the photosynthetic pigment contents in plants is a common procedure in agricultural studies and can describe plant conditions, such as their nutritional status, response to environmental changes, senescence, disease status and so forth. In this report, we show how the photosynthet...

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Main Authors: Kestrilia Rega Prilianti, Syaiful Anam, Tatas Hardo Panintingjati Brotosudarmo, Agus Suryanto
Format: Article
Language:English
Published: PAGEPress Publications 2020-12-01
Series:Journal of Agricultural Engineering
Subjects:
Online Access:https://www.j.agroengineering.org/index.php/jae/article/view/1082
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spelling doaj-42f0d528b7754d049e85886f06b42a642021-02-03T03:43:34ZengPAGEPress PublicationsJournal of Agricultural Engineering1974-70712239-62682020-12-0151410.4081/jae.2020.1082Real-time assessment of plant photosynthetic pigment contents with an artificial intelligence approach in a mobile applicationKestrilia Rega Prilianti0Syaiful Anam1Tatas Hardo Panintingjati Brotosudarmo2Agus Suryanto3Department of Informatics Engineering, Universitas Ma Chung; Department of Mathematics, Universitas BrawijayaDepartment of Mathematics, Universitas BrawijayaMa Chung Research Centre for Photosynthetic Pigments, Universitas Ma Chung, MalangDepartment of Mathematics, Universitas Brawijaya The assessment of the photosynthetic pigment contents in plants is a common procedure in agricultural studies and can describe plant conditions, such as their nutritional status, response to environmental changes, senescence, disease status and so forth. In this report, we show how the photosynthetic pigment contents in plant leaves can be predicted non-destructively and in real-time with an artificial intelligence approach. Using a convolutional neural network (CNN) model that was embedded in an Androidbased mobile application, a digital image of a leaf was processed to predict the three main photosynthetic pigment contents: chlorophyll, carotenoid and anthocyanin. The data representation, low sample size handling and developmental strategies of the best CNN model are discussed in this report. Our CNN model, photosynthetic pigment prediction network (P3Net), could accurately predict the chlorophyll, carotenoid and anthocyanin contents simultaneously. The prediction error for anthocyanin was ±2.93 mg/g (in the range of 0-345.45 mg/g), that for carotenoid was ±2.14 mg/g (in the range of 0-211.30 mg/g) and that for chlorophyll was ±5.75 mg/g (in the range of 0-892.25 mg/g). This is a promising result as a baseline for the future development of IoT smart devices in precision agriculture. https://www.j.agroengineering.org/index.php/jae/article/view/1082Artificial intelligenceconvolutional neural networkdigital imagemobile applicationnon-destructive methodphotosynthetic pigments.
collection DOAJ
language English
format Article
sources DOAJ
author Kestrilia Rega Prilianti
Syaiful Anam
Tatas Hardo Panintingjati Brotosudarmo
Agus Suryanto
spellingShingle Kestrilia Rega Prilianti
Syaiful Anam
Tatas Hardo Panintingjati Brotosudarmo
Agus Suryanto
Real-time assessment of plant photosynthetic pigment contents with an artificial intelligence approach in a mobile application
Journal of Agricultural Engineering
Artificial intelligence
convolutional neural network
digital image
mobile application
non-destructive method
photosynthetic pigments.
author_facet Kestrilia Rega Prilianti
Syaiful Anam
Tatas Hardo Panintingjati Brotosudarmo
Agus Suryanto
author_sort Kestrilia Rega Prilianti
title Real-time assessment of plant photosynthetic pigment contents with an artificial intelligence approach in a mobile application
title_short Real-time assessment of plant photosynthetic pigment contents with an artificial intelligence approach in a mobile application
title_full Real-time assessment of plant photosynthetic pigment contents with an artificial intelligence approach in a mobile application
title_fullStr Real-time assessment of plant photosynthetic pigment contents with an artificial intelligence approach in a mobile application
title_full_unstemmed Real-time assessment of plant photosynthetic pigment contents with an artificial intelligence approach in a mobile application
title_sort real-time assessment of plant photosynthetic pigment contents with an artificial intelligence approach in a mobile application
publisher PAGEPress Publications
series Journal of Agricultural Engineering
issn 1974-7071
2239-6268
publishDate 2020-12-01
description The assessment of the photosynthetic pigment contents in plants is a common procedure in agricultural studies and can describe plant conditions, such as their nutritional status, response to environmental changes, senescence, disease status and so forth. In this report, we show how the photosynthetic pigment contents in plant leaves can be predicted non-destructively and in real-time with an artificial intelligence approach. Using a convolutional neural network (CNN) model that was embedded in an Androidbased mobile application, a digital image of a leaf was processed to predict the three main photosynthetic pigment contents: chlorophyll, carotenoid and anthocyanin. The data representation, low sample size handling and developmental strategies of the best CNN model are discussed in this report. Our CNN model, photosynthetic pigment prediction network (P3Net), could accurately predict the chlorophyll, carotenoid and anthocyanin contents simultaneously. The prediction error for anthocyanin was ±2.93 mg/g (in the range of 0-345.45 mg/g), that for carotenoid was ±2.14 mg/g (in the range of 0-211.30 mg/g) and that for chlorophyll was ±5.75 mg/g (in the range of 0-892.25 mg/g). This is a promising result as a baseline for the future development of IoT smart devices in precision agriculture.
topic Artificial intelligence
convolutional neural network
digital image
mobile application
non-destructive method
photosynthetic pigments.
url https://www.j.agroengineering.org/index.php/jae/article/view/1082
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