基于改进MobileNetV2的柑橘害虫分类识别方法
作者:
作者单位:

1.华中农业大学工学院/农业农村部长江中下游农业装备重点实验室,武汉430070;2.广西特色作物研究院/广西柑橘育种与栽培工程技术研究中心,桂林 541004;3.宜昌市夷陵区农业技术服务中心,宜昌 443699

作者简介:

张鹏程,E-mail: 473421691@qq.com

通讯作者:

李善军, E-mail: shanjunlee@mail.hzau.edu.cn

中图分类号:

TP391.41;S432

基金项目:

国家重点研发计划项目(2020YFD1000101;2021YFD1400802-4)


A classification and recognition method for citrus insect pests based on improved MobileNetV2
Author:
Affiliation:

1.College of Engineering/Ministry of Agriculture and Rural Affairs Key Laboratory of Agricultural Equipment in Mid-Lower Yangtze River, Huazhong Agricultural University,Wuhan 430070, China;2.Guangxi Academy of Specialty Crops/Guangxi Engineering Research Center of Citrus Breeding and Culture, Guilin 541004, China;3.Agricultural Technology Service Center at Yiling District, Yichang City, Yichang 443699, China

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    摘要:

    为提高柑橘害虫识别精准度和防治效果,本研究构建包含10类对柑橘危害程度较重的害虫图像数据集,基于神经网络MobileNetV2与注意力机制ECA开发轻量化且高识别精度的ECA_MobileNetV2模型,并基于该模型开发一款边缘计算App。将ECA注意力机制嵌入MobileNetV2网络的反残差结构尾部,以增强原网络的跨通道信息交互能力,提升原网络的特征提取能力。测试结果显示,ECA_MobileNetV2模型对柑橘害虫的分类准确率达到93.63%,相比于MobileNetV2、GoogLeNet和ResNet18模型分别提高了1.68、1.44和2.40个百分点,而模型参数量、浮点运算数和模型大小分别为3.50×106、328.06×106和8.72 MB,复杂度仅略高于MobileNetV2,可以在手机上以边缘计算的形式运行。研究结果表明,本研究开发的智能识别工具能够对不同种类的柑橘害虫进行快速、有效的分类识别。

    Abstract:

    Pest infestation reduces fruit quality and causes economic losses. Accurate identification of citrus pests is conducive to pest control. However, as the features to distinguish these pests are not obvious, manual classification is time-consuming and labor-intense, while advanced algorithms have high computational costs. Therefore, it is necessary to develop lightweight and accurate identification tools. In this article, a data set of insect pest images containing 10 types of pest images that are most harmful to citrus was constructed. A network featuring lightweight and high precision was developed based on MobileNet-V2 and the attention mechanism ECA. Moreover, an edge computing APP was also developed that can be run on Android phones. The ECA attention mechanism was embedded in the tail of the anti-residual structure of the improved MobileNetV2 network to enhance the cross-channel information interaction ability and improve the feature extraction ability. The results of testing showed that the ECA_MobileNetV2 model had a classification accuracy of 93.63% for citrus pests, 1.68, 1.44 and 2.40 percentages higher than that of the MobileNetV2, GoogLeNet and ResNet18 models, respectively. The parameter, FLOPS and size of model was 3.50×106, 328.06×106 and 8.72 MB, respectively. Its complexity is only slightly higher than that of MobileNetV2, and it can run in the form of edge computing on mobile phones. It is indicated that the developed intelligent recognition tool can quickly and effectively classify and identify different types of citrus pests.

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引用本文

张鹏程,余勇华,陈传武,郑文燕,李善军.基于改进MobileNetV2的柑橘害虫分类识别方法[J].华中农业大学学报,2023,42(3):161-168

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  • 收稿日期:2023-02-10
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  • 在线发布日期: 2023-06-20
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