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水稻害虫智能检测技术的研究现状与发展趋势

岳学军 谭修灿 肖佳仪 陈俊致 欧阳海山 兰玉彬

华南农业大学学报2026,Vol.47Issue(2):196-208,13.
华南农业大学学报2026,Vol.47Issue(2):196-208,13.DOI:10.7671/j.issn.1001-411X.202510034

水稻害虫智能检测技术的研究现状与发展趋势

Research status and development trend of intelligent detection technology for rice pest

岳学军 1谭修灿 1肖佳仪 2陈俊致 1欧阳海山 1兰玉彬1

作者信息

  • 1. 华南农业大学 电子工程学院,广东 广州 510642
  • 2. 南京农业大学 前沿交叉研究院,江苏 南京 210095
  • 折叠

摘要

Abstract

Rice is the main grain crop in China,and pests are one of the key factors restricting its high quality and yield,imposing huge control pressure on growers.At present,rice pest detection still relies primarily on manual investigation and sensors,which have inherent defects such as low efficiency and poor real-time performance.These shortcomings make it difficult to timely detect pests at their early stages of occurrence,leading to the problem of extensive pesticide application,and causing economic losses and ecological damage.Therefore,conducting rapid and accurate intelligent detection of rice pests is of great significance for ensuring food security and promoting the development of green agriculture.With the iteration of information technology,intelligent detection technology for rice pest has made significant progress.This article reviews technologies for rice pest detection and their respective advantages,analyzes the internal constraints of various technologies,and then predicts the development trends of intelligent pest detection technology.Sensor technologies such as infrared optoelectronics,acoustics,electronic nose,and insect hormones are susceptible to interference from complex field environments and have insufficient stability in practical applications.Although traditional machine learning-based rice pest detection method has certain accuracy and application foundation,the results are easily constrained by subjective factors and have limited adaptability due to the reliance on manual feature extraction.The advantages of rice pest detection methods based on deep learning algorithms are prominent,not only with high recognition accuracy,but also with significantly reduced labor costs.Although there are certain requirements for experimental conditions and data volume,these can be gradually met through optimization at the technical and data levels.The fusion scheme of lightweight neural networks and edge devices has achieved a dual breakthrough in real-time detection and convenience,providing strong support for practical implementation in field scenes and having broad application prospects and promotion value.This review considers that deep learning is still the forefront technology direction in the field of intelligent detection of rice pests.Specifically,at the application level,in the future,it is necessary to improve the detection accuracy of models in actual field environments such as low light and shadow occlusion through multi-scale prediction optimization and feature extraction network enhancement.At the same time,it is necessary to further streamline the number of model parameters and computational complexity,improve recognition speed while ensuring accuracy,and combine internet of things(IoT)technology to achieve adaptation with edge devices,laying the foundation for field deployment and practical applications.

关键词

水稻/害虫检测/深度学习/边缘计算/物联网

Key words

Rice/Pest detection/Deep learning/Edge computing/Internet of things

分类

农业科技

引用本文复制引用

岳学军,谭修灿,肖佳仪,陈俊致,欧阳海山,兰玉彬..水稻害虫智能检测技术的研究现状与发展趋势[J].华南农业大学学报,2026,47(2):196-208,13.

基金项目

绿色农药国家重点实验室(华南农业大学)开放基金(GPLSCAU202408) (华南农业大学)

国家重点研发计划(2023YFD2000200) (2023YFD2000200)

广东农技服务轻骑兵重大农业技术乡村行推广项目(NJTG20240249) (NJTG20240249)

广东省科技成果入县达镇促进城乡区域协调发展专项(2025B0202010037) (2025B0202010037)

华南农业大学学报

1001-411X

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