» Articles » PMID: 38516179

Classification of Wheat Diseases Using Deep Learning Networks with Field and Glasshouse Images

Overview
Journal Plant Pathol
Date 2024 Mar 22
PMID 38516179
Authors
Affiliations
Soon will be listed here.
Abstract

Crop diseases can cause major yield losses, so the ability to detect and identify them in their early stages is important for disease control. Deep learning methods have shown promise in classifying multiple diseases; however, many studies do not use datasets that represent real field conditions, necessitating either further image processing or reducing their applicability. In this paper, we present a dataset of wheat images taken in real growth situations, including both field and glasshouse conditions, with five categories: healthy plants and four foliar diseases, yellow rust, brown rust, powdery mildew and Septoria leaf blotch. This dataset was used to train a deep learning model. The resulting model, named CerealConv, reached a 97.05% classification accuracy. When tested against trained pathologists on a subset of images from the larger dataset, the model delivered an accuracy score 2% higher than the best-performing pathologist. Image masks were used to show that the model was using the correct information to drive its classifications. These results show that deep learning networks are a viable tool for disease detection and classification in the field, and disease quantification is a logical next step.

Citing Articles

Plant disease recognition datasets in the age of deep learning: challenges and opportunities.

Xu M, Park J, Lee J, Yang J, Yoon S Front Plant Sci. 2024; 15:1452551.

PMID: 39399537 PMC: 11466843. DOI: 10.3389/fpls.2024.1452551.


Classification of wheat diseases using deep learning networks with field and glasshouse images.

Long M, Hartley M, Morris R, Brown J Plant Pathol. 2024; 72(3):536-547.

PMID: 38516179 PMC: 10953319. DOI: 10.1111/ppa.13684.


Identification of wheat seedling varieties based on MssiapNet.

Feng Y, Liu C, Han J, Lu Q, Xing X Front Plant Sci. 2024; 14:1335194.

PMID: 38304454 PMC: 10830677. DOI: 10.3389/fpls.2023.1335194.


SeptoSympto: a precise image analysis of Septoria tritici blotch disease symptoms using deep learning methods on scanned images.

Mathieu L, Reder M, Siah A, Ducasse A, Langlands-Perry C, Marcel T Plant Methods. 2024; 20(1):18.

PMID: 38297386 PMC: 10832182. DOI: 10.1186/s13007-024-01136-z.

References
1.
Bolton M, Kolmer J, Garvin D . Wheat leaf rust caused by Puccinia triticina. Mol Plant Pathol. 2008; 9(5):563-75. PMC: 6640346. DOI: 10.1111/j.1364-3703.2008.00487.x. View

2.
Long M, Hartley M, Morris R, Brown J . Classification of wheat diseases using deep learning networks with field and glasshouse images. Plant Pathol. 2024; 72(3):536-547. PMC: 10953319. DOI: 10.1111/ppa.13684. View

3.
Liu M, Hambleton S . Taxonomic study of stripe rust, Puccinia striiformis sensu lato, based on molecular and morphological evidence. Fungal Biol. 2010; 114(10):881-99. DOI: 10.1016/j.funbio.2010.08.005. View

4.
Liu J, Wang X . Plant diseases and pests detection based on deep learning: a review. Plant Methods. 2021; 17(1):22. PMC: 7903739. DOI: 10.1186/s13007-021-00722-9. View

5.
Goyeau H, Park R, Schaeffer B, Lannou C . Distribution of pathotypes with regard to host cultivars in French wheat leaf rust populations. Phytopathology. 2008; 96(3):264-73. DOI: 10.1094/PHYTO-96-0264. View