PLANTNET: A DEEP LEARNING MODEL FOR EARLY DETECTION OF PLANT DISEASES

Plant leaf disease detection in high-value crops is an important problem for farmers and the agricultural industry, often resulting in significant crop losses and economic losses. This paper presents a deep learning model, PlantNET, for early identification of plant leaf infections based on Convolut...

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Main Authors: J Lenin, S Muthumarilakshmi, V S Prabhu
Format: Article
Language:English
Published: XLESCIENCE 2024-12-01
Series:International Journal of Advances in Signal and Image Sciences
Subjects:
Online Access:https://xlescience.org/index.php/IJASIS/article/view/177
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author J Lenin
S Muthumarilakshmi
V S Prabhu
author_facet J Lenin
S Muthumarilakshmi
V S Prabhu
author_sort J Lenin
collection DOAJ
description Plant leaf disease detection in high-value crops is an important problem for farmers and the agricultural industry, often resulting in significant crop losses and economic losses. This paper presents a deep learning model, PlantNET, for early identification of plant leaf infections based on Convolutional Neural Networks (CNNs) trained on a large collection of leaf images in the PlantVillage database, including both healthy and infected samples from several crops. PlantNET is constructed efficiently to capture the characteristics associated with plant leaf infections and is optimized to provide better accuracy. The PlantNet’s performance is computed regarding accuracy, precision, and recall measures. It enables quick diagnosis of infections, allowing for quick intervention solutions to minimize crop loss and the requirement for chemical treatments. The usefulness of PlantNet in agricultural applications emphasizes its potential to improve farming sustainability. The results highlight the need to use modern technology in precision agriculture to protect crop health and boost farmer profitability.
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institution Kabale University
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publishDate 2024-12-01
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series International Journal of Advances in Signal and Image Sciences
spelling doaj-art-c9c26b6505d24736993f3b442357a1992025-01-28T06:54:33ZengXLESCIENCEInternational Journal of Advances in Signal and Image Sciences2457-03702024-12-01102374710.29284/ijasis.10.2.2024.37-47205PLANTNET: A DEEP LEARNING MODEL FOR EARLY DETECTION OF PLANT DISEASESJ LeninS MuthumarilakshmiV S PrabhuPlant leaf disease detection in high-value crops is an important problem for farmers and the agricultural industry, often resulting in significant crop losses and economic losses. This paper presents a deep learning model, PlantNET, for early identification of plant leaf infections based on Convolutional Neural Networks (CNNs) trained on a large collection of leaf images in the PlantVillage database, including both healthy and infected samples from several crops. PlantNET is constructed efficiently to capture the characteristics associated with plant leaf infections and is optimized to provide better accuracy. The PlantNet’s performance is computed regarding accuracy, precision, and recall measures. It enables quick diagnosis of infections, allowing for quick intervention solutions to minimize crop loss and the requirement for chemical treatments. The usefulness of PlantNet in agricultural applications emphasizes its potential to improve farming sustainability. The results highlight the need to use modern technology in precision agriculture to protect crop health and boost farmer profitability.https://xlescience.org/index.php/IJASIS/article/view/177fungal infections, plant pathology, image classification, disease management, agricultural productivity
spellingShingle J Lenin
S Muthumarilakshmi
V S Prabhu
PLANTNET: A DEEP LEARNING MODEL FOR EARLY DETECTION OF PLANT DISEASES
International Journal of Advances in Signal and Image Sciences
fungal infections, plant pathology, image classification, disease management, agricultural productivity
title PLANTNET: A DEEP LEARNING MODEL FOR EARLY DETECTION OF PLANT DISEASES
title_full PLANTNET: A DEEP LEARNING MODEL FOR EARLY DETECTION OF PLANT DISEASES
title_fullStr PLANTNET: A DEEP LEARNING MODEL FOR EARLY DETECTION OF PLANT DISEASES
title_full_unstemmed PLANTNET: A DEEP LEARNING MODEL FOR EARLY DETECTION OF PLANT DISEASES
title_short PLANTNET: A DEEP LEARNING MODEL FOR EARLY DETECTION OF PLANT DISEASES
title_sort plantnet a deep learning model for early detection of plant diseases
topic fungal infections, plant pathology, image classification, disease management, agricultural productivity
url https://xlescience.org/index.php/IJASIS/article/view/177
work_keys_str_mv AT jlenin plantnetadeeplearningmodelforearlydetectionofplantdiseases
AT smuthumarilakshmi plantnetadeeplearningmodelforearlydetectionofplantdiseases
AT vsprabhu plantnetadeeplearningmodelforearlydetectionofplantdiseases