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基于深度学习的田间害虫自动识别技术综述
Survey of Automatic Identification of Field Pests Based on Deep Learning

DOI: 10.12677/JISP.2023.122008, PP. 77-88

Keywords: 深度学习,田间害虫识别,自动识别技术
Machine Learning
, Identification of Field Pests, Automatic Identification Technology

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Abstract:

中国是世界上最大的农业国之一,虫害是农业发展面临的一大问题,而害虫种类的精确识别是预测虫害、进行防治的重要基础。在过去,传统的人工害虫识别方法效率低,难以满足害虫防治的要求。随着科技的进步,害虫自动识别技术在农业实践中被广泛应用。在此背景下,本文探究了近年来基于深度学习的害虫自动识别技术的研究进展与发展状况,总结并比较了相关研究方法的异同与有关算法的创新点,以及在不同数据集的识别效果。最后讨论了深度学习在该领域面临的问题与挑战,得出今后的研究重点是建立综合性的害虫识别技术体系,将有关神经网络与优化算法结合起来,以提高害虫识别的准确率。本文可为深入研究基于深度学习的田间害虫自动识别技术提供参考。
China is one of the largest agricultural countries in the world, and insect pest is a major problem faced by agricultural development, and accurate identification of insect species is an important basis for forecasting insect pests and controlling them. In the past, traditional artificial pest identification methods were inefficient and difficult to meet the requirements of pest control. With the progress of science and technology, automatic pest identification technology is widely used in agricultural practice. In this context, this paper explores the research progress and development of automatic pest identification technology based on deep learning in recent years, summarizes and compares the similarities and differences of relevant research methods and the innovation of relevant algorithms, as well as the recognition effect in different data sets. Finally, the problems and challenges faced by deep learning in this field are discussed, and it is concluded that the focus of future research is to establish a comprehensive pest identification technology system, and combine relevant neural networks with optimization algorithms to improve the accuracy of pest identification. This paper can provide a reference for further research on automatic identification technology of field pests based on deep learning.

References

[1]  梁勇, 邱荣洲, 李志鹏, 陈世雄, 张钟, 赵健. 基于YOLOv5和多源数据集的水稻主要害虫识别方法[J]. 农业机械学报, 2022, 53(7): 250-258.
[2]  张银松. 基于深度学习的粘虫板图像害虫识别与计数[D]: [硕士学位论文]. 徐州: 中国矿业大学, 2019.
[3]  唐振韬, 邵坤, 赵冬斌, 朱圆恒. 深度强化学习进展: 从AlphaGo到AlphaGoZero[J]. 控制理论与应用, 2017, 34(12): 1529-1546.
[4]  Hinton, G.E. and Salakhutdinov, R. (2006) Reducing the Dimensionality of Data with Neural Networks. Science, 313, 504-507.
https://doi.org/10.1126/science.1127647
[5]  刘浏. 基于深度学习的农作物害虫检测方法研究与应用[D]: [博士学位论文]. 合肥: 中国科学技术大学, 2020.
https://doi.org/10.27517/d.cnki.gzkju.2020.001178
[6]  程曦, 吴云志, 张友华, 乐毅. 基于深度卷积神经网络的储粮害虫图像识别[J]. 中国农学通报, 2018, 34(1): 154-158.
[7]  Wen, C., Wu, D., Hu, H., et al. (2015) Pose Estimation-Dependent Identification Method for Field Moth Images Using Deep Learning Architecture. Biosystems Engineering, 136, 117-128.
https://doi.org/10.1016/j.biosystemseng.2015.06.002
[8]  梁万杰, 曹宏鑫. 基于卷积神经网络的水稻虫害识别[J]. 江苏农业科学2017, 45(20): 241-243+253.
https://doi.org/10.15889/j.issn.1002-1302.2017.20.060
[9]  Krizhevsky, A., et al. (2012) ImageNet Classification with Deep Convolutional Neural Networks. Communications of the ACM, 60, 84-90.
[10]  桂便, 祝玉华, 甄彤. 卷积神经网络在储粮害虫图像识别中的应用研究[J]. 粮油食品科技, 2018, 26(6): 73-76.
https://doi.org/10.16210/j.cnki.1007-7561.2018.06.014
[11]  肖小梅, 杨红云. 改进的Alexnet模型在水稻害虫图像识别中的应用[J]. 科学技术与工程, 2021(22): 94.
[12]  鲍文霞, 吴德钊. 基于轻量型残差网络的自然场景水稻害虫识别[J]. 农业工程学报, 2021, 37(16): 18.
[13]  雷建云, 陈楚, 郑禄, 帖军, 赵捷. 基于改进残差网络的水稻害虫识别[J]. 江苏农业科学, 2022, 50(14): 190-198.
https://doi.org/10.15889/j.issn.1002-1302.2022.14.027
[14]  卫雅娜, 王志彬, 乔晓军, 赵春江. 基于注意力机制与EfficientNet的轻量化水稻病害识别方法[J]. 中国农机化学报, 2022, 43(11): 172-181.
https://doi.org/10.13733/j.jcam.issn.2095-5553.2022.11.024
[15]  侯明伟. 基于空间金字塔池化的卷积神经网络图像分类算法[D]: [硕士学位论文]. 武汉: 武汉大学, 2018.
[16]  谢成军, 李瑞, 董伟, 宋良图, 张洁, 陈红波, 陈天娇. 基于稀疏编码金字塔模型的农田害虫图像识别[J]. 农业工程学报, 2016, 32(17): 144-151.
[17]  孙鹏, 陈桂芬, 曹丽英. 基于注意力卷积神经网络的大豆害虫图像识别[J]. 中国农机化学报, 2020, 41(2): 171-176.
https://doi.org/10.13733/j.jcam.issn.2095-5553.2020.02.26
[18]  甘雨, 郭庆文. 基于改进EfficientNet模型的作物害虫识别[J]. 农业工程学报, 2022, 38(1): 203-211.
[19]  Wright, J., Yang, A.Y., Ganesh, A., et al. (2009) Robust Face Recognition via Sparse Representation. IEEE Transactions on Pattern Analysis and Machine Intelligence, 31, 210-227.
https://doi.org/10.1109/TPAMI.2008.79
[20]  韩安太, 郭小华, 廖忠, 等. 基于压缩感知理论的农业害虫分类方法[J]. 农业工程学报, 2011, 27(6): 203-207.
[21]  张苗辉, 李俊辉, 李佩琛. 基于深度学习和稀疏表示的害虫识别算法[J]. 河南大学学报(自然科学版), 2018, 48(2): 207-213.
https://doi.org/10.15991/j.cnki.411100.2018.02.010
[22]  Redmon, J., Divvala, S.K., Girshick, R.B. and Farhadi, A. (2015) You Only Look Once: Unified, Real-Time Object Detection. 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Las Vegas, 27-30 June 2016, 779-788.
https://doi.org/10.1109/CVPR.2016.91
[23]  胡根生, 吴继甜, 鲍文霞, 曾伟辉. 基于改进YOLOv5网络的复杂背景图像中茶尺蠖检测[J]. 农业工程学报, 2021, 37(21): 191-198.
[24]  Liu, W., Anguelov, D., Erhan, D., Szegedy, C., Reed, S.E., Fu, C.-Y. and Berg, A.C. (2015) SSD: Single Shot MultiBox Detector. Computer Vision—ECCV 2016 14th European Conference, Amsterdam, 11-14 October 2016, 21-37.
https://doi.org/10.1007/978-3-319-46448-0_2
[25]  苗海委, 周慧玲. 基于深度学习的粘虫板储粮害虫图像检测算法的研究[J]. 中国粮油学报, 2019, 34(12): 93-99.
[26]  佘颢, 吴伶, 单鲁泉. 基于SSD网络模型改进的水稻害虫识别方法[J]. 郑州大学学报(理学版), 2020, 52(3): 49-54.
https://doi.org/10.13705/j.issn.1671-6841.2019526
[27]  Ren, S.Q., He, K.M., Girshick, R.B. and Sun, J. (2015) Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks.
[28]  陶震宇, 孙素芬, 罗长寿. 基于Faster-RCNN的花生害虫图像识别研究[J]. 江苏农业科学, 2019, 47(12): 247-250.
https://doi.org/10.15889/j.issn.1002-1302.2019.12.057
[29]  冯晋. 基于深度学习的水稻灯诱害虫检测方法的研究与优化[D]: [硕士学位论文]. 杭州: 浙江理工大学, 2020.
https://doi.org/10.27786/d.cnki.gzjlg.2020.000366
[30]  Wu, X.P., Zhan, C., Lai, Y.-K., Cheng, M.-M. and Yang, J.F. (2019) IP102: A Large-Scale Benchmark Dataset for Insect Pest Recognition. Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), Long Beach, 15-20 June 2019, 8787-8796.
[31]  李国平, 王亚楠, 李辉, 黄建荣, 何运转, 封洪强. 河南省苗期玉米田草地贪夜蛾幼虫与常见其他种类害虫的识别特征[J]. 中国生物防治学报, 2019, 35(5): 747-754.
[32]  陈天娇, 曾娟, 谢成军, 王儒敬, 刘万才, 张洁, 李瑞, 陈红波, 胡海瀛, 董伟. 基于深度学习的病虫害智能化识别系统[J]. 中国植保导刊, 2019, 39(4): 26-34.
[33]  胡可柏. 基于深度学习的农林业害虫检测方法研究[D]: [硕士学位论文]. 北京: 北京林业大学, 2021.
https://doi.org/10.26949/d.cnki.gblyu.2021.000502

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