过度拟合
计算机科学
稳健性(进化)
白粉病
人工智能
模式识别(心理学)
深度学习
人工神经网络
生物化学
生物
基因
园艺
化学
作者
Yan‐Hong Liu,Hua Yang,Xindong Guo,Yanwen LI,Zhiwei Hu,Yiming Hou,Hongxia Song
出处
期刊:INMATEH-Agricultural Engineering
[R and D National Institute for Agricultural and Food Industry Machinery - INMA Bucharest]
日期:2022-08-31
卷期号:: 182-190
被引量:1
标识
DOI:10.35633/nmateh-67-18
摘要
Early diagnosis and accurate identification of fine-grained tomato diseases can control the spread of diseases and insect infections, thus ensuring the healthy development of the tomato industry. In this paper, four lightweight models of Tiny-AlexNet and Mid-AlexNet based on AlexNet and Tiny-VGG16 and Mid-VGG16 based on VGG16 were proposed for 5 kinds of early and late leaf diseases such as tomato powdery mildew. The computation speed of the model is accelerated by reducing the number of neurons in the fully connected layer. In order to avoid degradation in network training, data extension technology is introduced to prevent model overfitting. Among them, the Mid-VGG16 model is significantly better than accurate in early disease recognition, thus verifying the effectiveness of the lightweight model. The proposed model not only improves the accuracy, but also reduces the test time. The results were tested across 20 655 data sets on early and advanced disease. Compared with the traditional model, the average prediction accuracy of the proposed model is improved by about 0.15%, and the detection time is significantly reduced by about 50%. The improved model has strong robustness and high stability. The model can be used to accurately identify early diseases and facilitate real-time detection and prevention of tomato diseases.
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