Salta al menu principale di navigazione Salta al contenuto principale Salta al piè di pagina del sito

Articles

Online First

AI-Powered Image Processing Techniques for Grapevine Disease Detection in Agriculture

DOI
https://doi.org/10.3280/riss2025oa20626
Inviata
luglio 14, 2025
Pubblicato
2025-08-07

Abstract

This study investigates the application of artificial intelligence, specifically deep learning-based image processing techniques, for the detection of grapevine diseases in agricultural settings. Leveraging a publicly available dataset from Kaggle, the project focuses on classifying grape leaves as either healthy or affected by one of three common diseases: Black Rot, Esca (Black Measles), and Leaf Blight. Three machine learning models were developed and evaluated: Convolutional Neural Networks (CNN), Deep Neural Networks (DNN), and Transfer Learning. Each model was trained and tested using the same dataset to ensure a fair comparison. Among the models, the CNN achieved an accuracy of 97.40%, while the DNN model showed significantly lower performance at 31.41%. Transfer Learning outperformed the others, reaching a peak accuracy of 98.84%. The results underscore the potential of deep learning, particularly transfer learning, in automating disease identification processes in viticulture. Such AI-driven systems can enhance precision agriculture by enabling early detection and prompt intervention, ultimately contributing to improved crop yield and quality.

Riferimenti bibliografici

  1. Smith J. et al. Deep Learning for Plant Disease Detection: A CNN Approach.
  2. Patel R. et al. Transfer Learning in Agricultural Image Classification.
  3. Wang L. et al. Comparing DNN and CNN for Image-Based Disease Classification.
  4. Mohanty S. P., Hughes D. P., and Salathé M. (2016), Using deep learning for image-based plant disease detection. Frontiers in Plant Science, 7, p. 1419.
  5. Sladojevic S., Arsenovic M., Anderla A., Culibrk D., and Stefanovic D. (2016). Deep Neural Networks based recognition of plant diseases by leaf image classification. Computational Intelligence and Neuroscience, 3289801.
  6. Too E. C., Yujian L., Njuki S., and Yingchun L. (2019). A comparative study of fine-tuning deep learning models for plant disease identification. Computers and Electronics in Agriculture, 161: 272-279.
  7. Kamilaris A. and Prenafeta-Boldú F. X. (2018). Deep learning in agriculture: A survey. Computers and Electronics in Agriculture, 147: 70-90.
  8. Brahimi M., Arsenovic M., Laraba S., Sladojevic S., Boukhalfa K., and Moussaoui A. (2018). Deep learning for plant diseases: Detection and saliency map visualisation. Multimedia Tools and Applications, 77: 19951-19971.
  9. Zhang S., Huang W., and Zhang C. (2019). Plant disease detection using convolutional neural networks with multi-task learning. Frontiers in Plant Science, 10: 907.
  10. Saleem M. H., Potgieter J., and Arif K. M. (2021). Plant disease detection using deep learning: A review. Plants, 10(6), 1216.
  11. Fuentes A., Yoon S., Kim S. C., and Park D. S. (2017). A robust deep-learning-based detector for real-time tomato plant disease and pest diagnosis. Sensors, 17(9), 2022.
  12. Picon A. et al. (2019). Deep learning models for grapevine disease detection. Biosystems Engineering, 189: 135-148.
  13. Barbedo J. G. A. (2018). Impact of dataset size and variety on the effectiveness of deep learning for plant disease classification. Computers and Electronics in Agriculture, 153: 46-53.
  14. Rahman A. and Archana A. (2020). Transfer learning-based plant disease detection using ResNet models. International Journal of Scientific Research in Computer Science, 5(4): 45-50.
  15. Liu B., Zhang Y., He D., and Li Y. (2018). Identification of apple leaf diseases based on deep convolutional neural networks. Symmetry, 10(1): 11.
  16. Sladojevic M., Arsenovic M., Anderla A., Culibrk D., and Stefanovic D. (2016). Deep Neural Networks Based Recognition of Plant Diseases by Leaf Image Classification. Computational Intelligence and Neuroscience.
  17. Mohanty S. P., Hughes D. P., and Salathé M. (2016). Using Deep Learning for Image-Based Plant Disease Detection. Frontiers in Plant Science, 7: 1419.
  18. Brahimi M., Boukhalfa K., and Moussaoui A. M. (2017). Deep Learning for Tomato Diseases: Classification and Symptoms Visualization. Applied Artificial Intelligence, 31(4): 299-315.
  19. Ferentinos K. P. (2018). Deep Learning Models for Plant Disease Detection and Diagnosis. Computers and Electronics in Agriculture, 145: 311-318.
  20. Too J., Yujian L., Njuki S., and Yingchun L. (2019). A Comparative Study of Fine-Tuning Deep Learning Models for Plant Disease Identification. Computers and Electronics in Agriculture, 161: 272-279.

Metriche

Caricamento metriche ...