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Deep Learning-Based Barley Disease Quantification for Sustainable Crop Production.
Bouhouch, Yassine; Esmaeel, Qassim; Richet, Nicolas; Barka, Essaïd Aït; Backes, Aurélie; Steffenel, Luiz Angelo; Hafidi, Majida; Jacquard, Cédric; Sanchez, Lisa.
Affiliation
  • Bouhouch Y; Université de Reims Champagne-Ardenne, Unité de recherche Résistance Induite et Bioprotection des Plantes (RIBP), EA 4707 USC INRAE 1488, Reims, France.
  • Esmaeel Q; Faculté des sciences, Université Moulay Ismail, Laboratoire de biotechnologie végétale et de biologie moléculaire, B.P. 11201, Zitoune, Meknès, Maroc.
  • Richet N; Université de Reims Champagne-Ardenne, Unité de recherche Résistance Induite et Bioprotection des Plantes (RIBP), EA 4707 USC INRAE 1488, Reims, France.
  • Barka EA; Université de Reims Champagne-Ardenne, Unité de recherche Résistance Induite et Bioprotection des Plantes (RIBP), EA 4707 USC INRAE 1488, Reims, France.
  • Backes A; Université de Reims Champagne-Ardenne, Unité de recherche Résistance Induite et Bioprotection des Plantes (RIBP), EA 4707 USC INRAE 1488, Reims, France.
  • Steffenel LA; Université de Reims Champagne-Ardenne, Unité de recherche Résistance Induite et Bioprotection des Plantes (RIBP), EA 4707 USC INRAE 1488, Reims, France.
  • Hafidi M; Université de Reims Champagne-Ardenne, LICIIS-Laboratoire d'Informatique en Calcul Intensif et Image pour la Simulation/LRC DIGIT URCA-CEA, Reims, France.
  • Jacquard C; Faculté des sciences, Université Moulay Ismail, Laboratoire de biotechnologie végétale et de biologie moléculaire, B.P. 11201, Zitoune, Meknès, Maroc.
  • Sanchez L; Université de Reims Champagne-Ardenne, Unité de recherche Résistance Induite et Bioprotection des Plantes (RIBP), EA 4707 USC INRAE 1488, Reims, France.
Phytopathology ; 114(9): 2045-2054, 2024 Sep.
Article in En | MEDLINE | ID: mdl-38831567
ABSTRACT
Net blotch disease caused by Drechslera teres is a major fungal disease that affects barley (Hordeum vulgare) plants and can result in significant crop losses. In this study, we developed a deep learning model to quantify net blotch disease symptoms on different days postinfection on seedling leaves using Cascade R-CNN (region-based convolutional neural network) and U-Net (a convolutional neural network) architectures. We used a dataset of barley leaf images with annotations of net blotch disease to train and evaluate the model. The model achieved an accuracy of 95% for Cascade R-CNN in net blotch disease detection and a Jaccard index score of 0.99, indicating high accuracy in disease quantification and location. The combination of Cascade R-CNN and U-Net architectures improved the detection of small and irregularly shaped lesions in the images at 4 days postinfection, leading to better disease quantification. To validate the model developed, we compared the results obtained by automated measurement with a classical method (necrosis diameter measurement) and a pathogen detection by real-time PCR. The proposed deep learning model could be used in automated systems for disease quantification and to screen the efficacy of potential biocontrol agents to protect against disease.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Plant Diseases / Ascomycota / Hordeum / Plant Leaves / Deep Learning Language: En Journal: Phytopathology Journal subject: BOTANICA Year: 2024 Type: Article Affiliation country: France

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Plant Diseases / Ascomycota / Hordeum / Plant Leaves / Deep Learning Language: En Journal: Phytopathology Journal subject: BOTANICA Year: 2024 Type: Article Affiliation country: France