Evaluating the Potential of Federated Learning for Maize Leaf Disease Prediction

Thalita Mendonça Antico, L. F. R. Moreira, Rodrigo Moreira
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引用次数: 6

Abstract

The diagnosis of diseases in food crops based on machine learning seemed satisfactory and suitable for use on a large scale. The Convolutional Neural Networks (CNNs) perform accurately in the disease prediction considering the image capture of the crop leaf, being extensively enhanced in the literature. These machine learning techniques fall short in data privacy, as they require sharing the data in the training process with a central server, disregarding competitive or regulatory concerns. Thus, Federated Learning (FL) aims to support distributed training to address recognized gaps in centralized training. As far as we know, this paper inaugurates the use and evaluation of FL applied in maize leaf diseases. We evaluated the performance of five CNNs trained under the distributed paradigm and measured their training time compared to the classification performance. In addition, we consider the suitability of distributed training considering the volume of network traffic and the number of parameters of each CNN. Our results indicate that FL potentially enhances data privacy in heterogeneous domains.
评价联邦学习在玉米叶片病害预测中的潜力
基于机器学习的粮食作物疾病诊断似乎令人满意,适合大规模使用。卷积神经网络(cnn)在考虑作物叶片图像捕获的疾病预测中表现准确,在文献中得到了广泛的增强。这些机器学习技术在数据隐私方面存在不足,因为它们需要在训练过程中与中央服务器共享数据,而不考虑竞争或监管问题。因此,联邦学习(FL)旨在支持分布式训练,以解决集中式训练中公认的差距。就目前所知,本文是FL在玉米叶片病害防治中的首次应用和评价。我们评估了在分布式范式下训练的五个cnn的性能,并将其训练时间与分类性能进行了比较。此外,我们还考虑了网络流量和每个CNN的参数数量来考虑分布式训练的适用性。我们的研究结果表明,FL有可能增强异构领域的数据隐私。
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