基于深度学习模型的水稻早期叶片病害预测

Abhishek Bajpai, N. Tiwari, Ashutosh Kumar Tripathi, V. Tripathi, Devesh Katiyar
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引用次数: 2

摘要

目前,世界上50%以上的人口依靠大米生存。但是稻谷作物的产量受到多种病害的影响。水稻叶片病害主要有褐斑病、黄斑病和稻瘟病。这些疾病限制了水稻的生长和生产,这可能导致重大的经济和生态损失。如果在早期阶段迅速准确地识别出这些疾病,就可以大大减少对作物的危害和对农民的损失。已经提出了多种方法来解决这个问题,使用不同的机器学习和深度学习技术。在本文中,我们考虑了四类对叶类的分类。我们使用深度学习技术来检测受影响植物的实际疾病。我们实现了三种架构:VGGNet16, RenNet101,& AlexNet。在这三者中,Alexnet的准确率最高。AlexNet模型在我们的数据集中分别达到了92.35%和85.27%的训练和测试准确率。
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Early leaf diseases prediction in Paddy crop using Deep learning model
At present, more than 50 % of the world’s population is dependent on rice for its survival. But there are various diseases that decrease the productivity of the paddy crop. The most affecting paddy leaf diseases are Brown spot, Hispa, & Rice blast. These illnesses restrict rice plants from growing and producing as they should, which might result in significant economic and ecological losses. The harm to the crops and the losses to the farmers can both be significantly reduced if these diseases are quickly and accurately recognized at an early stage. Multiple methods have been proposed to solve this problem using different machine learning and deep Learning techniques. In this paper, we have considered four classes for the classification of the leaf category. We used deep learning techniques to detect the actual disease of affected plants. We implemented three architectures i,e. VGGNet16, RenNet101,& AlexNet. Out of these three, Alexnet has the highest Accuracy. The AlexNet model has achieved training & testing accuracy of 92.35% and 85.27% respectively in our dataset.
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