DOAJ Open Access 2026

SwinGhost-ClustNet: An explainable deep ensemble model for papaya leaf disease detection and field deployment in Bangladeshi agriculture

Shourav Dey Mohammad Kamrul Hasan Apurba Adhikary Sanjida Akter Md Sabbir Ejaz

Abstrak

Early detection of papaya leaf disease is essential for Bangladeshi farmers who experience 39.9% post-harvest losses and pesticide misuse risks. The proposed research presents SwinGhost-ClustNet, which is an ensemble of Swin Transformer to capture the global context, GhostNet to capture the local textures, cross-attention fusion, and K-means clustering (k = 8, silhouette score 0.67) on a 9342-image dataset across eight classes (anthracnose, bacterial spot, healthy, leaf curl, mealybug, mite, mosaic, ring spot) in eight districts.The model reached 99.25% accuracy, 99.28% precision, 99.25% recall, 99.25% F1-score, and 1.000 ROC-AUC on 1401 test images, which is 2.10% higher than base models using pseudo-labels and cross-attention (ablation-validated). Explainable AI (Grad-CAM++ IoU 0.72, Layer-CAM 0.68, and Grad-CAM 0.65) visualizes disease-specific features such as lesions and webbing, and enables building farmer trust.An API based on Flask provides real-time diagnostic, confidence ratings (>70% criterion), and recommendations of pesticides in the Bengali language, which makes it possible to deploy it to the field regardless of single-label restrictions. Future efforts: severity scoring + dosage recommendations, multi-label classification, model pruning (<100 MB), cloud deployment (AWS/GCP), and multi-crop validation with domain adaptation (e.g., 98.89% on lemon leaves; Section 4.7) to address domain shift and species differences. This promotes precision farming, which minimizes losses and excess of chemicals in Bangladesh.

Penulis (5)

S

Shourav Dey

M

Mohammad Kamrul Hasan

A

Apurba Adhikary

S

Sanjida Akter

M

Md Sabbir Ejaz

Format Sitasi

Dey, S., Hasan, M.K., Adhikary, A., Akter, S., Ejaz, M.S. (2026). SwinGhost-ClustNet: An explainable deep ensemble model for papaya leaf disease detection and field deployment in Bangladeshi agriculture. https://doi.org/10.1016/j.atech.2026.101824

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Informasi Jurnal
Tahun Terbit
2026
Sumber Database
DOAJ
DOI
10.1016/j.atech.2026.101824
Akses
Open Access ✓