Fungal Disease Detection Using CNN Deep Learning Method

Authors

  • Dika Dika Universitas Pembangunan Panca Budi Medan
  • Muhammad Iqbal Universitas Pembangunan Panca Budi

DOI:

https://doi.org/10.65853/jaden.v1i2.120

Keywords:

Mushrooms, Fungal Diseases, Deep Learning, CNN, Digital Image

Abstract

This study aims to detect mushroom diseases based on digital images using the Deep Learning Convolutional Neural Network (CNN) method. Fungal diseases are often the main cause of decreased quality and yield, so a fast and accurate detection method is needed. The dataset used consists of images of healthy mushrooms and diseased mushrooms obtained through direct image capture at the cultivation location. The research stages include image preprocessing, CNN model training, and performance evaluation using accuracy, precision, recall, and F1-score metrics. The results show that the CNN model is able to detect mushroom diseases with a high level of accuracy, so this method has the potential to be used as a decision support system in mushroom cultivation.

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References

Agustiani, S., Ramadhan, A., & Nugroho, R. (2022). Implementation of deep learning in rice pest classification using convolutional neural networks. Jurnal Buana Informatika, 13(2), 101–110.

Azizah, QN, & Prasetyo, A. (2023). Classification of corn leaf diseases using the convolutional neural network method with the AlexNet architecture. Journal of Information Technology and Computer Science, 10(3), 455–462.

Intizhami, NS, Mukhtarom, R., & Amir, S. (2023). Classification of tomato plant diseases using ensemble convolutional neural networks. National Seminar on Electrical Engineering and Informatics, 5(1), 72–79.

Kusuma Whardana, A., Prabowo, DA, & Setiawan, E. (2024). Classification of grape leaf diseases using transfer learning convolutional neural network VGG16. Journal of Computer Systems and Artificial Intelligence, 7(1), 15–24.

Laksono, FB, & Hidayat, R. (2024). Image-based plant disease detection using a combination of CNN VGG16 and ResNet. Journal of Computer and Information Technology, 8(2), 98–107.

Pratama, MD, Gustriansyah, R., & Purnamasari, E. (2024). Digital image-based classification of banana leaf diseases using convolutional neural networks. Integrated Technology Journal, 12(1), 45–53.

Sentosa, E., Wijaya, A., & Permana, D. (2022). Implementation of image classification using convolutional neural networks in batik motif recognition. Tambusai Education Journal, 6(2), 1123–1131.

Shinta, R., & Kurniawan, F. (2023). Classification of rice leaf disease images using convolutional neural network with VGG-19 architecture. INTECOM Journal, 3(1), 25–33.

Trisiawan, IK, Yuliza, Y., & Attamimi, S. (2022). Application of multilabel convolutional neural network for object image classification. Journal of Electrical Technology, 21(2), 134–142.

Wardani, Y., & Leonardi, L. (2023). Digital image-based grape leaf disease classification using convolutional neural networks. Journal of Technology and Information Systems, 9(3), 201–209.

Wibowo, A., & Setyawan, B. (2025). Digital image-based rice leaf disease detection using convolutional neural networks. Indonesian Journal of Digital Intelligence, 4(1), 11–20.

Yulianto, D., & Rahmawati, N. (2025). Implementation of convolutional neural network for tomato leaf disease classification. Journal of Informatics, Veteran National Development University, Jakarta, 6(1), 55–63.

Zulfikar, M., & Hasanah, U. (2025). Identification of corn leaf diseases based on deep learning convolutional neural networks. Journal of Informatics and Computation, 10(1), 88–96.

Prasetyo, H., & Mahendra, G. (2024). Performance analysis of convolutional neural networks in horticultural plant disease detection. Journal of Agricultural Informatics, 5(2), 67–75.

Sari, RP, & Nugraha, A. (2023). Image-based plant disease detection using deep learning convolutional neural network method. Journal of Information and Communication Technology, 11(2), 140–148.

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Published

2026-01-29

How to Cite

Dika, D., & Iqbal, M. (2026). Fungal Disease Detection Using CNN Deep Learning Method. JADEN : Journal of Algorithmic Digital Engineering and Networks, 1(2), 42–48. https://doi.org/10.65853/jaden.v1i2.120