用人工智能赋予农民权力:cnn对小麦病害多分类的联合学习

Shiva Mehta, V. Kukreja, Satvik Vats
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引用次数: 5

摘要

由于世界人口的增加、营养偏好的变化以及对粮食和工业基本材料的需求不断增长,需要更高的农业产出。然而,农业部门面临着一些困难,例如气候变化和生产风险严重程度的上升,这对粮食产量产生了不利影响。农作物产量预测算法已经使用机器学习和深度学习技术来处理这个问题。然而,传统的机器学习技术效率较低,因为与气象数据、地球数据和农业管理数据相关的许多特征分散并孤立于特定的组织计算机或智能农业设备。利用9876张图片,提出了一种协同学习的CNN小麦病害识别方法。建议的方法使用联邦平均技术在跨各种客户端设备的横向分散数据集上训练模型。根据我们的实验结果,所建议的方法击败了目前最先进的小麦病害检测模型,获得了较高的准确性、精密度、召回率和F1分数。建议的方法展示了联邦学习如何在分布式环境中增强机器学习模型。它还可以应用于其他农业用途,如作物预测、土壤分析和昆虫检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empowering Farmers with AI: Federated Learning of CNNs for Wheat Diseases Multi-Classification
Higher agricultural outputs are required due to the rising worldwide population, shifting nutritional preferences, and growing demand for food and basic materials for the industry. However, the farming sector confronts several difficulties, such as climate change and a rise in the severity of production risks, which have had a detrimental effect on food output. Crop production forecast algorithms have been created using machine learning and deep learning techniques to handle this issue. Traditional machine learning techniques, however, are less effective because many characteristics related to meteorological data, earth data, and agricultural management data are dispersed and isolated to specific organization computers or smart farming devices. Using about 9,876 pictures, a collaborative learning CNN method for wheat disease identification is suggested. The suggested method used the federated averaging technique to train the model on laterally dispersed datasets across various client devices. The suggested method beat current state-of-the-art models for detecting wheat illness, according to the findings of our experiments, obtaining high accuracy, precision, recall, and F1 score. The suggested method shows how federated learning can enhance machine learning models in a distributed environment. It can also be applied to other agricultural uses, such as crop forecast, soil analysis, and insect detection.
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