Title:Potato Disease Detection and Classification Using Deep Learning Models
Authors:Shreya Geete, Shruti Sharma, Vedika Purohit, Yogesh Patware, Manoj Agrawal, Sumeet Kothari
Published in: Volume 3 Issue 1 Jan June 2026, Page No.398-406
Keywords:Agriculture, Potato leaf disease, Deep
learning, EfficientNet, Vision Transformer (ViT),CNN, Smart farming, Image classification.
Abstract:Agriculture is the backbone of food
security in the world. However, crop diseases remain
one of the main obstacles to yield and productivity,
especially in staple crops like potatoes. Their early and
accurate identification is very important for reducing
damage and attaining sustainable farming. Unfortu
nately, the manual inspection usually practiced, or
most of the prevailing machine learning models, lack
accuracy and adaptability in the conditions typically
found on farms. The above-mentioned challenges have
been overcome in the present research by training
a hybrid deep learning model, including the merits
of EfficientNetV2B3 with powerful feature extraction
and the Vision Transformer (ViT), one of the state
of-the-art models known for its superior attention
mechanism, on a highly diversified Potato Leaf Disease
Dataset (PlantVillage). Complex and realistic agri
cultural data can be dealt with effectively. Results
achieved are very impressive- 98.28%, outperform
ing the current state-of-the-art models by 8.6% and
earlier research by 11.43%. Similarly, the values of
precision, recall, and F1-score are around 0.978, which
indicates very good reliability and consistency. In
summary, this hybrid approach provides an overall
strong, scalable, and highly accurate solution for the
automated potato leaf disease detection task, marking
one more step toward smarter, more sustainable
agricultural practice.
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