田冉, 陈梅香, 董大明, 李文勇, 矫雷子, 王以忠, 李明, 孙传恒, 杨信廷. 红外传感器与机器视觉融合的果树害虫识别及计数方法[J]. 农业工程学报, 2016, 32(20): 195-201. DOI: 10.11975/j.issn.1002-6819.2016.20.025
    引用本文: 田冉, 陈梅香, 董大明, 李文勇, 矫雷子, 王以忠, 李明, 孙传恒, 杨信廷. 红外传感器与机器视觉融合的果树害虫识别及计数方法[J]. 农业工程学报, 2016, 32(20): 195-201. DOI: 10.11975/j.issn.1002-6819.2016.20.025
    Tian Ran, Chen Meixiang, Dong Daming, Li Wenyong, Jiao Leizi, Wang Yizhong, Li Ming, Sun Chuanheng, Yang Xinting. Identification and counting method of orchard pests based on fusion method of infrared sensor and machine vision[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2016, 32(20): 195-201. DOI: 10.11975/j.issn.1002-6819.2016.20.025
    Citation: Tian Ran, Chen Meixiang, Dong Daming, Li Wenyong, Jiao Leizi, Wang Yizhong, Li Ming, Sun Chuanheng, Yang Xinting. Identification and counting method of orchard pests based on fusion method of infrared sensor and machine vision[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2016, 32(20): 195-201. DOI: 10.11975/j.issn.1002-6819.2016.20.025

    红外传感器与机器视觉融合的果树害虫识别及计数方法

    Identification and counting method of orchard pests based on fusion method of infrared sensor and machine vision

    • 摘要: 为了解决果园环境中单一的害虫监测技术存在的缺陷,该研究将红外传感器和机器视觉识别技术进行融合,从两个角度对目标害虫进行识别计数。选取梨小食心虫、苹小卷叶蛾、桃蛀螟、干扰物进行试验,通过实验室人工随机散落试验样本,获得其红外传感器以及机器视觉图像的识别结果,构造融合计数计算公式,通过计算得到害虫计数结果。结果显示:梨小食心虫、苹小卷叶蛾、桃蛀螟、干扰物的红外分类阈值分别为2.25、9.06、17.88、28.38,其红外识别范围分别为(0,5、(5,13、(13,23、(23,32;梨小食心虫、苹小卷叶蛾、桃蛀螟、干扰物的红外识别准确率分别为92%、78%、80%、88%,图像识别准确率分别为92%、88%、92%、90%,融合计数精度分别为98%、92%、94%、96%。可见,将红外传感器和图像识别技术相融合能够提高果树性诱害虫的识别准确率,为果园害虫的合理防治提供参考。

       

      Abstract: Abstract: Traditional single monitoring technique in orchard environment has such shortages as weak effectiveness, inaccurate count and pooruniversality. Now existing pest monitoring methods include acoustic measurement, piezoelectric measurement, infrared measurement and machine vision recognition technology. In view of this, the future development trend of pest detection technology will undoubtedly be a variety of detection methods combined with each other. Comprehensive utilization of the existing testing methods will form a multiple information fusion technique to detect and provide reliable scientific decision based on comprehensive prevention and control of fruit pests, and the loss will be reduced to a minimum. In this paper, infrared measurement and machine vision recognition technology are integrated to identify pest species and count pest populations, and information of pests is obtained from 2 aspects. The accuracy of the fusion result is verified by comparing with the manual count. Taking Grapholitha molesta, Dichocrocis punctiferalis, Adoxophyes orana and disruptors as research objects, recognition results of infrared sensors and machine vision are obtained using the laboratory artificially randomly scattered test samples. Test samples were collected in Xiaotangshan National Precision Agriculture Research and Demonstration Base from July to September in 2015. For the infrared method, infrared circuit is mainly composed of infrared detector, photoelectric detector, filter, amplifier, communication module, and so on. Due to the different size of insect pests, the infrared output is different. The bigger the pest, the bigger the value of the infrared output. Therefore, the influence of ambient light on the detection results is significant. For example, Adoxophyes orana is larger than Grapholitha molesta and smaller than Dichocrocis punctiferalis. To go along with this, the thresholds of Grapholitha molesta, Adoxophyes orana, Dichocrocis punctiferalis and disruptors are 5.655, 13.47 and 23.13, respectively. The system is mainly composed of infrared sensor unit and machine vision unit. The infrared sensor unit introduces the phase lock amplifier technology to extract the weak useful signal from the noise environment, and to solve the problem of the influence of the natural light environment. The core of the lock-in amplification technology is correlation detection, and using the characteristic of useful signals and noise signals being not related to each other to extract the useful signal from the noise by the correlation operation. Using Matlab environment feature extraction algorithm, normalized entropy and normalized energy are chosen as texture feature indices for the HSV three-channel texture feature based on the 'DB4' wavelet decomposition. Infrared image fusion and pest identification are mainly based on the time stamp of infrared and image recognition. Fusion count results are obtained by a formula operation which is derived from the linear regression analysis of SPSS. The results of infrared sensor and machine vision are the input of the formula. We can get the conclusion that the infrared output value ranges are (0,5, (5,13, (13,23, and (23,32, and the infrared recognition accuracy rates of Grapholitha molesta, Dichocrocis punctiferalis, Adoxophyes orana and disruptors are 92%, 78%, 80% and 88% respectively. The image recognition accuracy rates are 92%, 88%, 92% and 90%, respectively, and the fusion recognition accuracy rates are 98%, 92%, 94% and 96%, respectively. Obviously, the fusion of infrared sensor and image recognition technology can improve the accuracy and efficiency of the identification of fruit pests. This method has very high innovation in both theory and practical application.

       

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