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Hybrid CNN Model for Detection of Diseases in Leafy Plants
by
Paul Sreelekha
, Kumar Sanjay
, Moitra Srijata
, Rana Sonu
, Ghosh Shivnath
, Chakraborty Bilwamoy
in
classification
/ cnn
/ disease detection
/ image detection
/ image processing
/ mobilenet v2
/ vgg16
/ xgboost
2026
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Do you wish to request the book?
Hybrid CNN Model for Detection of Diseases in Leafy Plants
by
Paul Sreelekha
, Kumar Sanjay
, Moitra Srijata
, Rana Sonu
, Ghosh Shivnath
, Chakraborty Bilwamoy
in
classification
/ cnn
/ disease detection
/ image detection
/ image processing
/ mobilenet v2
/ vgg16
/ xgboost
2026
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Hybrid CNN Model for Detection of Diseases in Leafy Plants
Journal Article
Hybrid CNN Model for Detection of Diseases in Leafy Plants
2026
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Overview
Traditional methods for plant disease detection involve expert inspection, which is both subjective and time-consuming. Convolutional neural networks (CNNs), Extreme Gradient Boosting are combined in this model to increase accuracy in plant disease classification. CNN can extract and learn features from leaf images, while EGB optimise accuracy by extracting patterns. XGBoost stands out with its efficient boosting techniques that combine weak learners into stronger classifiers for enhanced performance. Finally, an ensemble technique combining predictions from both classifiers leverages their respective strengths for optimal plant disease detection, achieving an overall accuracy rate of more than 97.2%.
Publisher
EDP Sciences
Subject
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