Using artificial intelligence (AI) for grapevine disease detection based on images
- Poblete-Echeverría, Carlos 12
- Hernández, Inés 12
- Gutiérrez, Salvador 3
- Iñiguez, Rubén 12
- Barrio, Ignacio 12
- Tardaguila, Javier 12
-
1
Universidad de La Rioja
info
-
2
Instituto de Ciencias de la Vid y del Vino
info
-
3
Universidad de Granada
info
- Pau Roca (ed. lit.)
Éditorial: Web of Conferences
ISSN: 2117-4458
Année de publication: 2023
Volumen: 68
Congreso: 44th World Congress of Vine and Wine (44º. 2023. Cádiz/Jerez)
Type: Communication dans un congrès
beta Ver similares en nube de resultadosRésumé
Nowadays, diseases are one of the major threats to sustainable viticulture. Manual detection through visual surveys, usually done by agronomists, relies on symptom identification and requires an enormous amount of time. Detection in field conditions remains difficult due to the lack of infrastructure to perform detailed and rapid field scouting covering the whole vineyard. In general, symptoms of grapevine diseases can be seen as spots and patterns on leaves. In this sense, computer vision technologies and artificial intelligence (AI) provide an excellent alternative to improve the current disease detection and quantification techniques using images of leaves and canopy. These novel methods can minimize the time spent on symptom detection, which helps in the control and quantification of the disease severity. In this article, we present some results of deep learning-based approaches used for detecting automatically leaves with downy mildew symptoms from RGB images acquired under laboratory and field conditions. The results obtained so far with AI approaches for detecting leaves with downy mildew symptoms are promising, and they put in evidence of the huge potential of these techniques for practical applications in the context of modern and sustainable viticulture.
Références bibliographiques
- Shirahatti J., Patil R., Akulwar P. In Proceedings of the 2018 3rd International Conference on Communication and Electronics Systems (ICCES), Coimbatore, India, 15-16 October 2018, 1171–1174 (2018)
- Atkinson D., Walker R.L. Crop protection and food quality: challenges and answers, The Science Beneath Organic Production 213–235 (2019)
- Wilcox W.F., Gubler W.D., Uyemoto J.K.. Compendium of grape diseases, disorders, and pests. Am Phytopath Society (2015)
- Padol P.B., Yadav A.A.. Advances in Signal Processing (CASP) 175–179 (2016)
- Russell S.J., Norvig P.. Artificial Intelligence: A Modern Approach, 3rd ed.; Pearson: London, UK, (2009)
- Hernández I., Gutiérrez S., Ceballos S., Palacios F., Toffolatti S.L., Maddalena G., Diago M.P., & Tardaguila J.. OENO One 56(3), (2022)
- Badrinarayanan, (2017), IEEE Transactions on Pattern Analysis and Machine Intelligence, 39, pp. 2481, 10.1109/TPAMI.2016.2644615
- Adeel A., Khan M.A., Sharif M., Azam F., Shah J.H., Umer T., et al. Sustainable Comput. 24 (2019)
- Zhang Z., Qiao Y., Guo Y., He D.. Deep Frontiers in Plant Science 13 (2022)