植物病害的迁移学习分析与表征

S. Bhimavarapu, P. Vinitha
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引用次数: 8

摘要

确定农区内利用的作物病害的基础设施缺陷,制定特殊标准和解决方案。对疾病的不同情况和原因的诊断已经沉迷于当前适合使用无线场景或交换机控制疾病的移动技术。本文以现有的支持向量机设计技术为基础,从数学和功能两个方面进行设计,保证通过测试和训练场景来提高疾病的定位能力。SVM模型的设置也考虑到不同作物相关图像的不同数据集,以提供问题场景的正确信息。这些问题的存在可能是由于自然的或人为的,对于每一组观察和确定的疾病。因此,疾病的识别将满足设计标准,确保为每个级别的训练和测试集提供不同的参数标准。为了确保新颖和更准确的场景,我们考虑了不同的数据集用于不同的测试和训练图像,为所提出的模型作为CNN的一部分应用迁移学习提供了更高和可靠的精度。将植物病害图像的不同场景作为限定情况下15617张图像的数据集,利用迁移学习在CNN上临时建立训练模型。在提供所需可行性的考虑测试向量上,从设计模型观察到的准确性为98.56%。这些设计也为利用当前技术的人们提供了更好、更方便的解决方案。
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Analysis and Characterization of Plant Diseases using Transfer Learning
Infrastructural defects to determine the sicknesses of the crop utilized within the agricultural quarter improvising special standards and solutions. The diagnosis of the different scenario and cause for diseases had been let to indulge in the current mobile technology suitable for the controlling of the disease using wireless scenario or switches. Our paper imparts on the current existing design technique as SVM, providing the mathematical and functional aspects of the design ensuring to improve the locating diseases using test and train scenarios. The setup for the SVM model is also taken in account for considerations of the different data sets of the images related different crops noting to provide the correct information of the problem scenario. These problems might exist due to natural or man-made for each set of the disease observed and identified. Hence recognition of the diseases would suffice the design criteria ensuring different parametric criteria for each level of training and test set provided. To ensure the novel and more accurate scenario different set of data set have been in consideration for different test and train images providing higher and reliable accuracy for the proposed model as part of CNN applying as Transfer learning. Different scenarios of the plant disease image have been considered as data set of 15617 images under restricted cases improvising a train model on CNN with transfer learning. The accuracy observed from the design model is observed 98.56% on the considered test vectors providing required feasibility. These designs also provide a better and convenient solutions for the people utilizing the current technologies.
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