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浙江大学学报(农业与生命科学版)  2014, Vol. 40 Issue (5): 585-590    DOI: 10.3785/j.issn.1008-9209.2014.03.241
农业工程     
基于无线传输技术的农田害虫检测与识别系统的开发
Development of  agricultural pests detection and identification  system based on the technology of wireless transmission
(
1. Public Information Industry of Zhejiang Province Co., Ltd, Hangzhou 310006, China; 2. College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China; 3. College of Electronic Information, Zhejiang University of Media and Communications, Hangzhou 310018, China
)
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摘要: 为了解决农业生产过程中虫害难以及时发现和识别的问题,开发了基于图像和无线传输技术的农田害虫远程自动识别系统。该系统包括1个主控平台和多个远程平台,主控平台与多个远程平台之间采用3G/4G无线网络通信,远端平台实时采集害虫图片,并将图片发送到主控端。主控端和远程端均具有获取图片、读入图片、特征提取、特征选择、专家识别、发送图片等功能模块。主控端和远端平台采用最大类间方差法将害虫从背景中分割出来,系统提取害虫的面积、周长、复杂度、偏心率和不变矩等16个形态学特征值,以及9个颜色特征值和基于灰度共生矩阵的10个纹理构成特征向量,并利用支持向量机分类器对农田中常见的稻纵卷叶螟、斜纹夜蛾、稻螟蛉、二化螟、玉米螟、白背飞虱和小地老虎等7种害虫进行分类。试验验证表明,系统对7种典型害虫的平均正确识别率为88.5%,取得了较好的效果。
Abstract: The automatic remote pest-identification system is developed aiming at solving the difficulty of detecting pests in good timing in farmland, which applies modern wireless image and data transaction tools. The system consists of one main controller and several supplemental remote platforms. In structure, every single platform includes function modules like image acquisition, image processing, feature extraction and classification, GPS and transmission module. These platforms communicate with each other through 3G/4G wireless network. Host end and the remote end has access to photos capture, pictures reading, feature extraction, feature selection, expert identification, pictures sending and so on. The workflow is as follows:
1) the remote platforms capture the images of stationary pests with image acquisition system;
2) the system extracts certain pests from the farming background according to the constructed vector including 16 morphological characteristic values such as area, perimeter, complexity, eccentricity and invariant moment, 9 colors eigenvalues and 10  texture constituted feature;
3) finally, the system classifies pests into 7  major types which are Cnaphalocrocis medinalis Guenee, Prodenia litura, Chilo suppressalis, Ostrinia
nubilalis, Naranga aenesc, Sogatella furcifera and Agrotis ypsilon Rottemberg with Otsu threshold segmentation method based on HSV color mode. The accuracy of this technology was proved to be 88.5%. The identification process can be completed in both remote platform and in the host control platform automatically after the pest images were compressed and transmitted to the host control platform through 3G/4G wireless network. With more and more application and information collected, the system will expand the sample library dynamically by saving the image into the local disks. The feasibility of the system is discussed and statistically significantly tested in the context. The advent of the automatic remote pest-identification system could help provide pest information about the farmland timely and accurately thus improving the prevention effect.
出版日期: 2014-09-20
CLC:  TP 391.4  
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引用本文:

宋革联1, 韩瑞珍2,3, 张永华3*, 何勇2*. 基于无线传输技术的农田害虫检测与识别系统的开发[J]. 浙江大学学报(农业与生命科学版), 2014, 40(5): 585-590.

Song Gelian1, Han Ruizhen2,3, Zhang Yonghua3*, He Yong2*. Development of  agricultural pests detection and identification  system based on the technology of wireless transmission. Journal of Zhejiang University (Agriculture and Life Sciences), 2014, 40(5): 585-590.

链接本文:

http://www.zjujournals.com/agr/CN/10.3785/j.issn.1008-9209.2014.03.241        http://www.zjujournals.com/agr/CN/Y2014/V40/I5/585

[1] 宋革联1, 韩瑞珍2,3, 张永华3*, 何勇2*. 基于无线传输技术的农田害虫检测与识别系统的开发[J]. 浙江大学学报(农业与生命科学版), 0, (): 585-590.