Ensembled AttenNet: A Novel Deep Learning Approach for Mango Leaf DiseaseDetection

Authors

  • Farhana Batool Department of Computer Science & IT, Ghazi University, Dera Ghazi Khan, Pakistan Author
  • Muhammad Nadeem Akhtar Department of Computer Science & IT, Ghazi University, Dera Ghazi Khan, Pakistan Author
  • Muhammad Azhar Department of Computer Science & IT, Ghazi University, Dera Ghazi Khan, Pakistan Author
  • Muhammad Tariq Department of Computer Science & IT, Ghazi University, Dera Ghazi Khan, Pakistan Author

DOI:

https://doi.org/10.63163/jpehss.v3i1.135

Keywords:

Plant disease detection, Mango leaf disease, Deep learning in agriculture, Convolutional Neural Network (CNN), Attention Mechanism, MangoleafBD dataset, Early disease identification, Mango crop quality improvement

Abstract

Agriculture is severely threatened by plant diseases, which can result in poor quality and
quantity of food. Because of the rapid spread of plant diseases and the vast areas affected, it is
difficult to control them effectively. Several leaf diseases affect the mango industry particularly
severely, reducing fruit yields and quality. In order to prevent and treat these diseases
effectively, it is crucial to identify them quickly and correctly. In this study, attention methods
and multi-scale feature fusion will be used to improve automatic detection of mango leaf
diseases. To extract the features, we use a pretrained VGG16 model. A number of common
diseases were evaluated, including anthracnose, bacterial canker, weevils, dieback, gall flies,
powdery mildew, sooty mold, and healthy leaves. Data used for classification comes from
Kaggle's MangoleafBD dataset. In order to train and test the model, 4000 images were used.
In addition to cross-validation methods, precision, recall, and F1 metrics are used to measure
model resilience. An accuracy of up to 99% was achieved with the model. This model provides
better results than state-of-the-art models.

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Published

2025-03-31