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基于改进VGG网络的农作物病害图像识别
引用本文:岳有军,李雪松,赵辉,王红君.基于改进VGG网络的农作物病害图像识别[J].农机化研究,2022,44(6):18-24.
作者姓名:岳有军  李雪松  赵辉  王红君
作者单位:天津理工大学 天津市复杂系统控制理论与应用重点实验室/电气电子工程学院,天津 300384;天津理工大学 天津市复杂系统控制理论与应用重点实验室/电气电子工程学院,天津 300384;天津农学院 工程技术学院,天津 300392
基金项目:天津市科技计划项目(18YFZCNC01120)。
摘    要:随着计算机技术的飞速发展,使用机器视觉进行农作物病害识别成为了一种趋势.但是,当前农作物病害图像识别研究主要集中在提高其识别精度方面而很少考虑实际复杂自然条件下的鲁棒性研究.在实际复杂自然条件下,噪声和复杂自然条件背景会降低识别精度.为此,对VGG网络进行改进,将高阶残差和参数共享反馈子网络添加进VGG网络中,识别实际...

关 键 词:农作物病害识别  VGG网络  高阶残差子网络  参数共享反馈子网络

Crop Disease Image Recognition Based on Improved VGG Network
Yue Youjun,Li Xuesong,Zhao Hui,Wang Hongjun.Crop Disease Image Recognition Based on Improved VGG Network[J].Journal of Agricultural Mechanization Research,2022,44(6):18-24.
Authors:Yue Youjun  Li Xuesong  Zhao Hui  Wang Hongjun
Institution:(Tianjin University of Technology, Tianjin Key Laboratory of Complex System Control Theory and Application/School of Electrical and Electronic Engineering, Tianjin 300384, China;School of engineering and Technology, Tianjin Agricultural University, Tianjin 300392,China)
Abstract:With the rapid development of computer technology,using machine vision to identify crop diseases has become a trend.However,the current research on crop disease image recognition mainly focuses on improving the recognition accuracy,and seldom considers the robustness research under the actual complex natural conditions.In the actual complex natural conditions,noise and background of complex natural conditions will reduce the recognition accuracy.Therefore,in this paper,VGG network is improved by adding high-order residual and parameter sharing feedback sub network into VGG network to identify crop diseases under actual complex natural conditions.The feature expression of crop disease appearance is provided by high-order residual sub network,which makes the accuracy rate of disease recognition higher.The background noise in deep feature of disease image is weakened by parameter sharing feedback sub network,which makes the improved VGG network have stronger robustness.The experimental results show that the proposed method is better than SVM,alexnet,resnet-50 and vgg-16 in recognition accuracy and robustness.
Keywords:crop disease identification  VGG network  high order residual  parameter sharing feedback
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