Deep transfer learning based disease detection and classification of tomato leaves - a comparative analysis

Dublin Core

Title

Deep transfer learning based disease detection and classification of tomato leaves - a comparative analysis

Subject

Classification
Deep transfer learning
Image processing
Occlusion sensitivity
Tomato leaf diseases

Description

A wide variety of diseases have a significant impact on tomato plants. To avoid crop quality issues, a prompt and precise diagnosis is crucial. Classifying plant diseases is one of the numerous applications where deep transfer learning models have recently produced remarkable results. This study dealt with fine-tuning by contrasting the most advanced architectures, including Inception V3, ResNet-18, ResNet-50, VGG-16, VGG-19, GoogLeNet, and AlexNet. In the end, a comparison evaluation is conducted. Nine distinct tomato disease classes and one healthy class from PlantVillage make up the dataset used in this study. Precision, recall, F1-score, and accuracy were the basis for a multiclass statistical analysis that assessed the models. The ResNet-50 approach yielded significant results with precision: 82%, recall: 81%, F1-score: 81%, and accuracy: 85%. With this high success rate, it is reasonable to say that mobile applications or IoT-compatible gadgets implemented with the ResNet-50 model can assist farmers in identifying and safeguarding tomatoes against the aforementioned diseases.

Creator

Munira Akter Lata1, Marjia Sultana2, Iffat Ara Badhan3, Mastura Jahan Maria1, Fariha Tasnim Nuha1

Source

Journal homepage: http://journal.uad.ac.id/index.php/TELKOMNIKA

Date

Sep 10, 2025

Contributor

PERI IRAWAN

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Munira Akter Lata1, Marjia Sultana2, Iffat Ara Badhan3, Mastura Jahan Maria1, Fariha Tasnim Nuha1, “Deep transfer learning based disease detection and classification of tomato leaves - a comparative analysis,” Repository Horizon University Indonesia, accessed February 3, 2026, https://repository.horizon.ac.id/items/show/10328.