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基于ResNet-50深度卷积网络的果树病害智能诊断模型研究
引用本文:金瑛,叶飒,李洪磊. 基于ResNet-50深度卷积网络的果树病害智能诊断模型研究[J]. 农业图书情报学刊, 2021, 0(4): 58-67
作者姓名:金瑛  叶飒  李洪磊
作者单位:辽宁师范大学大数据与商务智能实验室;中国农业科学院农业信息研究所
基金项目:中国工程科技知识中心建设项目“农业专业知识服务系统”(CKCEST-2020-1-20)。
摘    要:[目的/意义]果树病害危及农业生产安全,运用人工智能技术帮助果农及时准确地识别果树病害对保障农业安全生产具有重要意义.[方法/过程]采用10 000张果树叶片病斑图像数据集,通过旋转、污化、增噪、切割等图像增强手段,提高样本图像的多样性;使用ResNet-50深度卷积网络模型,进行机器学习,获得果树病害识别模型,并基于...

关 键 词:ResNet-50  图像识别  果树疾病  智能诊断

The Intelligent Diagnosis Model of Fruit Tree Disease Based on ResNet-50
JIN Ying,YE Sa,LI Honglei. The Intelligent Diagnosis Model of Fruit Tree Disease Based on ResNet-50[J]. Journal of Library and Information Sciences in Agriculture, 2021, 0(4): 58-67
Authors:JIN Ying  YE Sa  LI Honglei
Affiliation:(School of Government Management,Liaoning Normal University,Dalian 116029;Institute of Agricultural Information,Chinese Academy of Agricultural Sciences,Beijing 100081)
Abstract:[Purpose/Significance]Fruit tree diseases endanger the safety of agricultural production,and the use of artificial intelligence technologies to help fruit growers identify fruit tree diseases in a timely and accurate manner is of great significance to ensure safe agricultural production.[Method/Process]Using 10000 fruit tree leaf diseased spots image data sets,through image enhancement methods such as rotation,pollution,noise enhancement,and cutting to improve the diversity of sample images;using the ResNet-50 deep convolutional network model to perform machine learning to obtain the fruit tree diseases identification model,and develop application software based on this model to provide online diagnostic services.[Results/Conclusions]The experimental results show that the average recognition rate of the four fruit tree diseases reached 92.9%,which has a better diagnostic effect compared with related research results.
Keywords:ResNet-50  image recognition  fruit tree disease  intelligent diagnosis
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