Automatic and Reliable Leaf Disease Detection Using Deep Learning Techniques
Type de document
journalArticle
Langue source
-- Langue source --
Titre
Automatic and Reliable Leaf Disease Detection Using Deep Learning Techniques
Titre français
Titre anglais
Auteur(s)
- CHOWDHURY Muhammad E. H.
- RAHMAN Tawsifur
- KHANDAKAR Amith
- AYARI Mohamed Arselene
- KHAN Aftab Ullah
- KHAN Muhammad Salman
- AL-EMADI Nasser
- REAZ Mamun Bin Ibne
- ISLAM Mohammad Tariqul
- ALI Sawal Hamid Md
Editeur(s)
Autre(s)
Id
L9IW4YQJ
Version
4094
Date ajout
25 mai 2021 11:36
Date modification
25 mai 2021 11:36
Résumé
Plants are a major source of food for the world population. Plant diseases contribute to production loss, which can be tackled with continuous monitoring. Manual plant disease monitoring is both laborious and error-prone. Early detection of plant diseases using computer vision and artificial intelligence (AI) can help to reduce the adverse effects of diseases and also overcome the shortcomings of continuous human monitoring. In this work, we propose the use of a deep learning architecture based on a recent convolutional neural network called EfficientNet on 18,161 plain and segmented tomato leaf images to classify tomato diseases. The performance of two segmentation models i.e., U-net and Modified U-net, for the segmentation of leaves is reported. The comparative performance of the models for binary classification (healthy and unhealthy leaves), six-class classification (healthy and various groups of diseased leaves), and ten-class classification (healthy and various types of unhealthy leaves) are also reported. The modified U-net segmentation model showed accuracy, IoU, and Dice score of 98.66%, 98.5%, and 98.73%, respectively, for the segmentation of leaf images. EfficientNet-B7 showed superior performance for the binary classification and six-class classification using segmented images with an accuracy of 99.95% and 99.12%, respectively. Finally, EfficientNet-B4 achieved an accuracy of 99.89% for ten-class classification using segmented images. It can be concluded that all the architectures performed better in classifying the diseases when trained with deeper networks on segmented images. The performance of each of the experimental studies reported in this work outperforms the existing literature.
Note
None
CRAW tags
- AB - Transversal
- FREDO santé végétale
- FREDO technologie et innovation
- GEO Quatar
- technologie
- tomate
WEB tags
- CNN
- automatic plant disease detection
- classification
- deep learning
- segmentation of leaves
- smart agriculture
Titre de la publication
AgriEngineering
Volume
3
Pages
294-312
Date caractères
2021/6
Date publication
26 juin 2021
Doi
10.3390/agriengineering3020020
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