Image Recognition Method of Agricultural Pests Based on Multisensor Image Fusion Technology

With the rise and development of precision agriculture and smart agriculture concepts, traditional agricultural pest detection and identification methods have become increasingly unable to meet current agricultural production requirements due to their slow recognition speed, low recognition accuracy...

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Main Authors: Xianfeng Zeng, Changjiang Huang, Liuchun Zhan
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Advances in Multimedia
Online Access:http://dx.doi.org/10.1155/2022/6359130
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author Xianfeng Zeng
Changjiang Huang
Liuchun Zhan
author_facet Xianfeng Zeng
Changjiang Huang
Liuchun Zhan
author_sort Xianfeng Zeng
collection DOAJ
description With the rise and development of precision agriculture and smart agriculture concepts, traditional agricultural pest detection and identification methods have become increasingly unable to meet current agricultural production requirements due to their slow recognition speed, low recognition accuracy, and strong subjectivity need. This article aims to combine multifeature fusion technology with sensors to apply to crop pest detection and build crop pest detection services based on image recognition. In terms of image recognition, the use of image denoising methods based on median filtering, image preprocessing methods based on the maximum between-class error method (Otsu), image segmentation methods based on super green features, and feature extraction methods based on multiparameter features and based on the one-to-one elimination strategy and the M-SVM multiclass recognition algorithm fused with the kernel function, it realizes the identification and detection of six soybean leaf borers. The system uses the ARM920T series S3C2440 chip as the central processing unit. Through the temperature and humidity sensor and infrared, the multisensor module composed of sensors collects real-time information on the agricultural greenhouse. After normalizing the information, the central processing unit performs judgment processing and information fusion. And through experimental data, it is finally verified that the image recognition method used in this paper improves the recognition rate and effectiveness by nearly 65% in the detection of soybean leaf moth pests.
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institution Kabale University
issn 1687-5699
language English
publishDate 2022-01-01
publisher Wiley
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series Advances in Multimedia
spelling doaj-art-b3641448ccd949c6bc70df78dbf67d652025-02-03T07:24:17ZengWileyAdvances in Multimedia1687-56992022-01-01202210.1155/2022/6359130Image Recognition Method of Agricultural Pests Based on Multisensor Image Fusion TechnologyXianfeng Zeng0Changjiang Huang1Liuchun Zhan2School of Computer ScienceThe College of Computer Science Guangzhou College of Applied Science and TechnologyThe College of Computer and Information EngineeringWith the rise and development of precision agriculture and smart agriculture concepts, traditional agricultural pest detection and identification methods have become increasingly unable to meet current agricultural production requirements due to their slow recognition speed, low recognition accuracy, and strong subjectivity need. This article aims to combine multifeature fusion technology with sensors to apply to crop pest detection and build crop pest detection services based on image recognition. In terms of image recognition, the use of image denoising methods based on median filtering, image preprocessing methods based on the maximum between-class error method (Otsu), image segmentation methods based on super green features, and feature extraction methods based on multiparameter features and based on the one-to-one elimination strategy and the M-SVM multiclass recognition algorithm fused with the kernel function, it realizes the identification and detection of six soybean leaf borers. The system uses the ARM920T series S3C2440 chip as the central processing unit. Through the temperature and humidity sensor and infrared, the multisensor module composed of sensors collects real-time information on the agricultural greenhouse. After normalizing the information, the central processing unit performs judgment processing and information fusion. And through experimental data, it is finally verified that the image recognition method used in this paper improves the recognition rate and effectiveness by nearly 65% in the detection of soybean leaf moth pests.http://dx.doi.org/10.1155/2022/6359130
spellingShingle Xianfeng Zeng
Changjiang Huang
Liuchun Zhan
Image Recognition Method of Agricultural Pests Based on Multisensor Image Fusion Technology
Advances in Multimedia
title Image Recognition Method of Agricultural Pests Based on Multisensor Image Fusion Technology
title_full Image Recognition Method of Agricultural Pests Based on Multisensor Image Fusion Technology
title_fullStr Image Recognition Method of Agricultural Pests Based on Multisensor Image Fusion Technology
title_full_unstemmed Image Recognition Method of Agricultural Pests Based on Multisensor Image Fusion Technology
title_short Image Recognition Method of Agricultural Pests Based on Multisensor Image Fusion Technology
title_sort image recognition method of agricultural pests based on multisensor image fusion technology
url http://dx.doi.org/10.1155/2022/6359130
work_keys_str_mv AT xianfengzeng imagerecognitionmethodofagriculturalpestsbasedonmultisensorimagefusiontechnology
AT changjianghuang imagerecognitionmethodofagriculturalpestsbasedonmultisensorimagefusiontechnology
AT liuchunzhan imagerecognitionmethodofagriculturalpestsbasedonmultisensorimagefusiontechnology