基于改进YOLOv7的水稻害虫识别方法
作者:
作者单位:

1.重庆三峡学院生物与食品工程学院,重庆 404000;2.重庆文理学院园林与生命科学学院,重庆 402100;3.中国地质大学(武汉)国家GIS工程研究中心,武汉 430074

作者简介:

郑果, E-mail:zhengguo19840@163.com

通讯作者:

姜玉松, E-mail:jysong@126.com

中图分类号:

S431.9

基金项目:

国家自然科学基金面上项目(42271397)


Recognition of rice pests based on improved YOLOv7
Author:
Affiliation:

1.College of Biology and Food Engineering, Chongqing Three Gorges University, Chongqing 404000, China;2.College of Landscape and Life Sciences, Chongqing University of Arts and Sciences, Chongqing 402100, China;3.National Engineering Research Center for Geographic Information System, China University of Geosciences(Wuhan),Wuhan 430074,China

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    摘要:

    为解决水稻害虫体型小且不同类型害虫外观差异小、同类型害虫不同生长过程中外观差异大导致水稻害虫难以识别的问题,将卷积块注意力和特征金字塔模块引入图像识别网络YOLOv7。以湖北省鄂州市水稻种植基地为样本采集点,构建一个具有挑战性的大规模水稻虫害数据集;根据样本分布特点进行数据增强,引入随机噪声、Mixup、Cutout等数据增强方法,使深度学习模型从更深的维度学习害虫判别力视觉特征;将MobileNetv3作为主干网络,对YOLOv7网络进行改进,并构建基于特征金字塔的多尺度神经网络模型,提升小个体害虫的识别精度。试验结果显示,基于改进YOLOv7的水稻虫害检测平均准确率为85.46%,超越YOLOv7、EfficientNet-B0等网络。改进YOLOv7模型大小为20.6 M,检测速度为92.2 帧/s,检测速度是原始YOLOv7算法的5倍以上。结果表明,该方法能用于实现水稻虫害远程实时自动化识别。

    Abstract:

    Because rice pests are usually small in size, some different types of pests have similar appearance, and the same type of pests have different appearance in different growth processes, it is very difficult to identify rice pest types. We improved YOLOv7 neural network by introducing convolutional block attention module and feature pyramid module and constructed a challenging rice pest dataset, which is collected from rice planting base of Ezhou City in Hubei province to recognize rice pests. According to the characteristics of sample distribution, data enhancement was carried out, and random noise, Mixup, Cutout and other data enhancement methods were introduced to make the deep learning model learn the visual features of pest discrimination from a deeper dimension. Taking MobileNetv3 as the backbone network, the YOLOv7 network was improved, and a multi-scale neural network model based on feature pyramid was constructed to improve the identification accuracy of small individual pests. The results showed that the average accuracy rate of rice pest detection based on the improved method is 85.46%, surpassing the networks such as YOLOv7 and Efficient Net-B0. The size of the improved YOLOv7 model is 20.6 M, and the detection speed is 92.2 frames/s, which is more than 5 times that of the original YOLOv7 algorithm. The results indicate that this method can be applied for remote automatic recognition of rice pests.

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郑果,姜玉松,沈永林.基于改进YOLOv7的水稻害虫识别方法[J].华中农业大学学报,2023,42(3):143-151

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  • 收稿日期:2022-09-27
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  • 在线发布日期: 2023-06-20
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