Abstract
I. INTRODUCTION
II. LITERATURE SURVEY
A. Classical Machine Learning Approaches
B. Transfer Learning and Fine-Tuning
C. Object Detection and Attention-Based Models
D. Recent Trends and Comprehensive Reviews
E. Summary of Research Gaps
III. DATASET
A. Dataset: Fruits Disease
IV. DISCUSSION
A. Model Performance Interpretation
B. Data Augmentation and Regularization Effects
C. Generalization and Transferability
D. Computational Efficiency and Deployment Perspective
E. Implications for Precision Agriculture
F. Limitations of the Study
G. Summary
V. CHALLENGES IN PLANT DISEASE DETECTION
V. CONCLUSION
REFERENCES