Comparison of Tomato Leaf Disease Detection Using Transfer Learning Architecture with the VGG19 Method
DOI:
https://doi.org/10.25008/bcsee.v4i2.1185Keywords:
Convolutional Neural Network, Deep Learning, Tomato Leaf Disease, Transfer Learning, VGG-19Abstract
Diseases in plants are often detrimental to agriculture, can be seen manually and require a very long time, which can lead to possible errors in disease detection. Detecting diseases in plants early can overcome these problems and reduce the risk of reduced crop production. The aim of this research is to make a comparison of quickly and accurately detecting tomato leaf diseases compared to previous researchers who used Deep Learning applications. Which can be applied effectively for image classification using the VGG19 method. The implementation of this model uses a dataset containing 2,694 images, including 3 different types of diseases. That the conclusion of this research is the fastest and most accurate way to detect tomato leaf diseases. To prove this research, results and necessary data will be presented in this paper. The accuracy obtained on the VGG-19 architecture was 91.85% with the best increase in accuracy compared to the previous journal which only produced 87% accuracy.
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References
Citra, K., Daun, P., & Padi, T. (2023). Klasifikasi Citra Penyakit Daun Tanaman Padi Menggunakan CNN
dengan Arsitektur VGG-19. Jurnal Sains Dan Informatika, 9(1), 37–45.
https://doi.org/10.22216/jsi.v9i1.2175
Jatinderkumar, R., & Saini, R. (2023). ScienceDirect TomConv?: An Improved CNN Model for Diagnosis
of Diseases in Tomato Plant Leaves. Procedia Computer Science, 218, 1825–1833.
https://doi.org/10.1016/j.procs.2023.01.160
LRahman, M. M., Wadud, M. A. H., & Hasan, M. M. (2021). Computerized classification of
gastrointestinal polyps using stacking ensemble of convolutional neural network. Informatics in Medicine
Unlocked, 24(June), 100603. https://doi.org/10.1016/j.imu.2021.100603
Nguyen, T. H., Nguyen, T. N., & Ngo, B. V. (2022). A VGG-19 Model with Transfer Learning and Image
Segmentation for Classification of Tomato Leaf Disease. AgriEngineering, 4(4), 871–887.
https://doi.org/10.3390/agriengineering4040056
Wu, Q., Chen, Y., & Meng, J. (2020). Dcgan-based data augmentation for tomato leaf disease
identification. IEEE Access, 8, 98716–98728. https://doi.org/10.1109/ACCESS.2020.2997001
Alim, M. M. F., Subiyanto, & Sartini. (2021). Identification of diseases in tomato leaves using
convolutional neural network and transfer learning method. Journal of Physics: Conference Series,
(4). https://doi.org/10.1088/1742-6596/1918/4/042137
Borugadda, P., Lakshmi, R., & Sahoo, S. (2023). Transfer Learning VGG16 Model for Classification of
Tomato Plant Leaf Diseases: A Novel Approach for Multi-Level Dimensional Reduction. Pertanika
Journal of Science and Technology, 31(2), 813–841. https://doi.org/10.47836/pjst.31.2.09
Of, A. (2023). Tomato Leaf Disease Detection Using Cutting-Edge Deep Learning. 66(1), 4320–4332.
Yang, L., Yu, L., Tao, S., Yang, Z., Gao, W., & Ren, Y. (2021). Identification of tomato pests and diseases
based on transfer learning. Journal of Physics: Conference Series, 2025(1). https://doi.org/10.1088/1742-
/2025/1/012076
P. B R, A. Ashok and S. H. A V, "Plant Disease Detection and Classification Using Deep Learning
Model," 2021 Third International Conference on Inventive Research in Computing Applications
(ICIRCA), Coimbatore, India, 2021, pp. 1285-1291, doi: 10.1109/ICIRCA51532.2021.9544729.
Sembiring, A., Away, Y., Arnia, F., Muharar, R. (2023). The Performance of Various Concise
Convolutional Neural Network Configurations in Classifying Tomato Diseases Based on Leaf Images.
In: Triwiyanto, T., Rizal, A., Caesarendra, W. (eds) Proceeding of the 3rd International Conference on
Electronics, Biomedical Engineering, and Health Informatics. Lecture Notes in Electrical Engineering,
vol 1008. Springer, Singapore. https://doi.org/10.1007/978-981-99-0248-4_26
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