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基于元学习的植物虫害识别原型网络VGG-ML

郭小燕 尚皓玺

南京农业大学学报2024,Vol.47Issue(2):392-401,10.
南京农业大学学报2024,Vol.47Issue(2):392-401,10.DOI:10.7685/jnau.202304011

基于元学习的植物虫害识别原型网络VGG-ML

Plant pest identification prototype network VGG-ML based on meta-learning

郭小燕 1尚皓玺1

作者信息

  • 1. 甘肃农业大学信息科学技术学院,甘肃兰州 730070
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摘要

Abstract

[Objectives]To solve the problem of relying on a large number of training samples when using deep learning technology to identify plant pests,a VGG(visual geometry group)prototype network(VGG-meta learning,VGG-ML)based on the idea of meta-learning was proposed in this pater to identify plant pest types in small sample backgrounds.[Methods]VGG16 was used as the embedding unit to extract the characteristics and category characteristics of the plant pest sample.In order to improve the recognition ability of the network for new categories,and solve the problem of low recognition accuracy of plant pests and unrecognizable new categories of pests in the case of small samples,the dataset that the training set and the test set from different data categories was adopted in this pater.The test set was divided into a support set(obtaining class prototypes)and a query set(sample prototypes),and the similarity between sample prototypes and class prototypes was measured by Euclidean distance to determine the category to which the samples belong.[Results]Twenty four kinds of agricultural insect pests such as aphids,armyworms and flea beetles of 11 plants such as corn,sugar beet,and alfalfa in the public dataset IP 102 were used as training data,and 8 kinds of common aquatic rice pests such as rice leaf roller,rice leaf caterpillar,Asian rice borer,rice gall midge,rice stem fly,rice water weevil,rice leaf hopper,and rice bract were used as test data.The recognition accuracy of VGG-ML was 67.98%and 81.5%respectively under 5-way,1-shot and 5-way,5-shot conditions,which was 3.53 and 4.4 percentage points higher than the original prototype network,respectively.Compared with the ResNet50 and VGG16 networks based on transfer learning,the accuracy of the 5-way and 5-shot tests increased by 28.65 and 25.94 percentage points,respectively.[Conclusions]VGG-ML was effective and reliable in the identification of plant pest types in small samples,and it could be applied to the identification of small samples of plants.

关键词

深度学习/原型网络/植物虫害/元学习

Key words

deep learning/prototype network/plant pest/meta learning

分类

农业科技

引用本文复制引用

郭小燕,尚皓玺..基于元学习的植物虫害识别原型网络VGG-ML[J].南京农业大学学报,2024,47(2):392-401,10.

基金项目

甘肃农业大学青年导师基金项目(QAU-QDFC-2021-18) (QAU-QDFC-2021-18)

甘肃农业大学科技创新基金项目(盛彤笙创新基金)(GSAU-STS-2021-16) (盛彤笙创新基金)

南京农业大学学报

OA北大核心CSTPCD

1000-2030

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