基于深度cnn -迁移学习方法的水稻叶片病害分类

Mehwish Moiz, M. Akmal, Muhammad Shakeel Ishtiaq, Usman Javed
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引用次数: 2

摘要

如果不采取必要的预防措施,水稻叶片可能会受到严重影响,例如相应产品的产量或产量下降。因此,为了保证水稻植株的健康和正常生长,及早诊断病害并对受损植株进行必要的治疗是至关重要的。由于人工疾病诊断需要大量的时间和精力,因此需要一种有效的自动化方法来进行疾病的早期诊断。因此,本研究针对上述问题,提出了一种基于深度学习的解决方案,用于水稻常见的三种植物病害:叶黑穗病、细菌性叶枯病和褐斑病的自动检测。本文采用基于VGGNet卷积神经网络(CNN)的迁移学习方法,在一个规模较大的Imagenet数据集上进行预训练,对水稻叶片病害进行有效分类。一些前沿分类器,包括支持向量机(SVM)、k近邻(kNN)、卷积神经网络(CNN)、随机森林和决策树,被用来比较所提出框架的性能。结果表明,本文提出的cnn -迁移学习框架在5次交叉验证中以97.22%的平均准确率优于其他分类器。
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Classification of Rice Leaves Diseases by Deep CNN-Transfer Learning Approach for Improved Rice Agriculture
Rice leaves may suffer serious impacts such as low production or yield of the respective products if necessary precautions are not taken. Therefore, to ensure the healthy and normal growth of the rice plants, early diagnosis of any disease and application of the necessary therapy to the damaged plants are paramount. Because manual disease diagnosis requires a lot of time and effort, an effective automated method is required for early disease diagnosis. As a result, this study presents a deep learning-based solution to the aforementioned issue for the automated detection of three plant diseases: leaf smut, bacterial leaf blight, and brown spot that frequently affect rice plants. The transfer learning with VGGNet convolutional neural network (CNN), which was pre-trained on a sizable Imagenet dataset, was used in this study to effectively classify the illnesses of rice leaves. A number of cutting-edge classifiers, including Support Vector Machine (SVM), k-nearest neighbour (kNN), Convolutional Neural Network (CNN), Random Forest, and Decision Tree, are used to compare the performance of the proposed framework. The results demonstrate that the proposed CNN-transfer learning framework outperforms other classifiers with a mean accuracy of 97.22% in the 5-fold cross-validation.
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