Department of Information Technology, Haramaya University, Haramaya, Ethiopia.
Department of Information Technology, University of Gondar, Gondar, Ethiopia.
PLoS One. 2024 Jul 25;19(7):e0307747. doi: 10.1371/journal.pone.0307747. eCollection 2024.
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.
埃塞俄比亚的小农种植野豌豆,既作为食物,也作为饲料、收入和土壤肥力的来源。然而,叶部病害,如壳二孢叶斑病、白粉病和叶斑病,会影响到作物的数量和质量以及作物生长。专家们使用肉眼观察来检测野豌豆病害。然而,这种方法既昂贵又耗费人力,且不够精确。因此,在本研究中,我们提出了一种基于迁移学习的野豌豆叶片病害自动诊断方法。我们对三种野豌豆叶片病害(壳二孢叶斑病、叶斑病和白粉病)进行了分类。使用 softmax 分类器对疾病进行分类。我们使用了总共 1600 张健康和患病叶片的图像来训练、验证和测试预训练模型。根据实验结果,DenseNet121 在 100 个 epoch 后达到了 99.73%的训练准确率、99.16%的验证准确率和 98.33%的测试准确率。我们希望这项研究工作将为农民和农业专家带来各种好处。它降低了野豌豆叶片病害检测和分类所需的成本和时间。因此,需要一种快速、自动化、成本更低且更准确的检测方法来克服检测问题。