Enhancing Tomato Leaf Disease DetectionviaOptimized VGG16and Transfer Learning Techniques

Dublin Core

Title

Enhancing Tomato Leaf Disease DetectionviaOptimized VGG16and Transfer Learning Techniques

Subject

leaf disease; images; classification; proposed method; transfer learning

Description

dentification of tomato leaf disease remains difficult because standard approaches are frequently incorrect in identifying distinct signs. Convolutional Neural Networks (CNNs) perform well in image classification and pattern identification, although they are prone to overfitting. Thus, max pooling was employed to reduce dimensionality while retaining crucial information. This paper offers an improved CNN through hyperparameter tuning and compares it to Transfer Learning models such as InceptionV3, NASNetMobile, and VGG16, which were chosen for their efficiency and accuracy. The dataset comprises 7,178 photos classified as Healthy, Leaf Late Blight, Septoria Leaf Spot, and Yellow Leaf Curl Virus, collected from Kaggle.. The dataset is separated into three sections: training, validation, and testing, with a ratio of 70:15:15. The results of this study revealed that the proposed method achieved the highest accuracy of 98.24%. In the application of transfer learning, the inceptionV3 model achieved an accuracy of 96.94%, whereas NASNetMobile obtained 97.50%, and VGG16 showed an accuracy of 96.76%. The evaluation is based on accuracy, precision, recall, F1-score and Inference time to determine the optimum model for accuracy and computing efficiency. This project uses the proposed method and Transfer Learning Techniques to categorize illness images on tomato leaves. These findings will drive further research to improve tehe performance of theproposed method for foliar disease classification and comparable applications

Creator

Sandy Putra Siregar1*, Imam Akbari2, Poningsih3, Anjar Wanto4,Solikhun

Source

https://jurnal.iaii.or.id/index.php/RESTI/article/view/6410/1079

Publisher

nformatics Master’s Student, STIKOM Tunas Bangsa, Pematangsiantar, Indonesia

Date

June 18, 2025

Contributor

FAJAR BAGUS W

Format

PDF

Language

ENGLISH

Type

TEXT

Files

Collection

Citation

Sandy Putra Siregar1*, Imam Akbari2, Poningsih3, Anjar Wanto4,Solikhun, “Enhancing Tomato Leaf Disease DetectionviaOptimized VGG16and Transfer Learning Techniques,” Repository Horizon University Indonesia, accessed January 27, 2026, https://repository.horizon.ac.id/items/show/10522.