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Field pea leaf disease classification using a deep learning approach

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  • Dagne Walle Girmaw
  • Tsehay Wasihun Muluneh

Abstract

Field peas are grown by smallholder farmers in Ethiopia for food, fodder, income, and soil fertility. However, leaf diseases such as ascochyta blight, powdery mildew, and leaf spots affect the quantity and quality of this crop as well as crop growth. Experts use visual observation to detect field pea disease. However, this approach is expensive, labor-intensive, and imprecise. Therefore, in this study, we presented a transfer learning approach for the automatic diagnosis of field pea leaf diseases. We classified three field pea leaf diseases: Ascochyta blight, leaf spot, and powdery mildew. A softmax classifier was used to classify the diseases. A total of 1600 images of both healthy and diseased leaves were used to train, validate, and test the pretrained models. According to the experimental results, DenseNet121 achieved 99.73% training accuracy, 99.16% validation accuracy, and 98.33% testing accuracy after 100 epochs. we expect that this research work will offer various benefits for farmers and farm experts. It reduced the cost and time needed for the detection and classification of field pea leaf disease. Thus, a fast, automated, less costly, and accurate detection method is necessary to overcome the detection problem.

Suggested Citation

  • Dagne Walle Girmaw & Tsehay Wasihun Muluneh, 2024. "Field pea leaf disease classification using a deep learning approach," PLOS ONE, Public Library of Science, vol. 19(7), pages 1-17, July.
  • Handle: RePEc:plo:pone00:0307747
    DOI: 10.1371/journal.pone.0307747
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