Use of Trained Convolutional Neural Networks for Analysis of Symptoms Caused by Botrytis fabae Sard

D. Alvarez-Sánchez, Anderson Arévalo, I. F. Benavides, C. Salazar-González, Carlos Betancourth
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Abstract

This study evaluated the use of convolutional neural networks (CNN) in agricultural disease recognition, specifically for Botrytis fabae symptoms. An experimental bean culture was used to capture images of healthy and affected leaflets, which were then used to perform binary classification and severity classification tests using several CNN models. The results showed that CNN models achieved high accuracy in binary classification, but performance decreased in severity classification due to the complexity of the task. InceptionResNet and ResNet101 were the models that performed best in this task. The study also utilized the Grad-CAM algorithm to identify the most significant B. fabae symptoms recognized by the CNNs. Overall, these findings can be used to develop a smart farming tool for crop production support and plant pathology research.
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利用训练卷积神经网络分析豆芽孢杆菌引起的症状
本研究评估了卷积神经网络(CNN)在农业疾病识别中的应用,特别是对豆芽孢杆菌症状的识别。实验用豆芽培养捕获健康和受影响小叶的图像,然后使用几个CNN模型进行二值分类和严重程度分类测试。结果表明,CNN模型在二值分类中获得了较高的准确率,但在严重性分类中由于任务的复杂性,性能有所下降。在这个任务中,InceptionResNet和ResNet101是表现最好的模型。该研究还利用Grad-CAM算法来识别cnn识别的最显著的fabae症状。总的来说,这些发现可用于开发用于作物生产支持和植物病理学研究的智能农业工具。
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