VGG16上马铃薯叶枯病分类的迁移学习

J. Akther, Muhammad Harun-Or-Roshid, Al-Akhir Nayan, M. G. Kibria
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引用次数: 3

摘要

据联合国粮农组织称,可得性、可及性、利用性和稳定性是粮食安全的四大支柱,而粮食安全在很大程度上取决于充足、安全和营养的食物。提前发现植物病害可能是对未来粮食供应中断或不可获得的恢复力的一种措施。由于高度精确机械化的显著性能,基于深度学习的方法已被应用于植物病害的自动识别和诊断,可以提高效率和生产力。本研究将VGG16迁移学习作为马铃薯疫病预测的重点。模型的权重在ImageNet上进行预训练,可以从小数据集的特定特征中提取。所实现的方法在自准备数据集上表现出显著的性能改进。在完成必要的训练和测试过程后,该模型的准确率达到96.88%。实验结果与已建立的模型进行了比较,表明该模型对马铃薯叶枯病的分类效果较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer learning on VGG16 for the Classification of Potato Leaves Infected by Blight Diseases
According to the FAO of the UN, availability, access, utilization, and stability are the four pillars of food security that largely depend on sufficient, safe, and nutritious food. Detecting plant disease in advance might be a measure of resilience to the future disruption or unavailability of food supply. Due to the notable performance through highly accurate mechanization, deep learning-based methods have been applied to automatically identify and diagnose plant disease that can improve efficiency and productivity. The work prioritizes Transfer Learning of VGG16 for predicting potato blight disease. The model’s weights are pretrained on ImageNet, which can be extracted from specific features of small datasets. The implemented approach presents a significant performance improvement on a self-prepared dataset. After completing the necessary training and testing process, 96.88% accuracy was achieved by the model. Experimental results are compared with well-established models, which concludes that the model performs better in classifying potato leaves blight diseases.
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