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Deep Learning-Based Barley Disease Quantification for Sustainable Crop Production. | LitMetric

AI Article Synopsis

  • - This study focuses on net blotch disease, a harmful fungal infection affecting barley plants, resulting in significant crop losses.
  • - Researchers created a deep learning model using Cascade R-CNN and U-Net architectures to accurately detect and quantify disease symptoms on barley leaves, achieving 95% accuracy.
  • - The model's effectiveness was validated against traditional measurement methods, showing promise for use in automated systems to monitor disease and evaluate biocontrol agents.

Article Abstract

Net blotch disease caused by is a major fungal disease that affects barley () 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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Source
http://dx.doi.org/10.1094/PHYTO-02-24-0056-KCDOI Listing

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