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AuthorZubair, Fida
AuthorSaleh, Moutaz
AuthorAkbari, Younes
AuthorAl Maadeed, Somaya
Available date2025-12-03T05:08:02Z
Publication Date2025
Publication NameAgriEngineering
ResourceScopus
Identifierhttp://dx.doi.org/10.3390/agriengineering7050159
CitationZubair, F.; Saleh, M.; Akbari, Y.; Al Maadeed, S. A Robust Ensemble Model for Plant Disease Detection Using Deep Learning Architectures. AgriEngineering 2025, 7, 159. https://doi.org/10.3390/agriengineering7050159
ISSN26247402
URIhttp://hdl.handle.net/10576/68976
AbstractThis study explores advanced methods for plant disease classification by integrating pre-trained deep learning models and leveraging ensemble learning. After a comprehensive review of deep learning methods in this area, the InceptionResNetV2, MobileNetV2, and EfficientNetB3 architectures were identified as promising candidates, as they have been shown to achieve high accuracy and efficiency in various applications. The proposed approach strategically combines these architectures to leverage their unique strengths: the advanced feature extraction capabilities of InceptionResNetV2, the lightweight and efficient design of MobileNetV2, and the scalable, performance-optimized structure of EfficientNetB3. By integrating these models, the approach aims to improve classification accuracy and robustness and overcome the multiple challenges of plant disease detection. Comprehensive experiments were conducted on three datasets-PlantVillage, PlantDoc, and FieldPlant-representing a mix of laboratory and real-world conditions. Advanced data augmentation techniques were employed to improve model generalization, while a systematic ablation study validated the efficacy of key architectural choices. The ensemble model achieved state-of-the-art performance, with classification accuracies of 99.69% on PlantVillage, 60% on PlantDoc, and 83% on FieldPlant. These findings highlight the potential of ensemble learning and transfer learning in advancing plant disease detection, offering a robust solution for real-world agricultural applications.
SponsorThe research reported in this publication was supported by the Qatar Research Development and Innovation Council [ARG01-0513-230141]. The Qatar National Library provides Open Access funding.
Languageen
PublisherMultidisciplinary Digital Publishing Institute (MDPI)
Subjectagriculture
artificial intelligence
deep learning
EfficientNetB3
InceptionResNetV2
MobileNetV2
plant disease classification
TitleA Robust Ensemble Model for Plant Disease Detection Using Deep Learning Architectures
TypeArticle
Issue Number5
Volume Number7
dc.accessType Open Access


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