Nondestructive detection of citrus greening by near infrared spectroscopy

被引:0
|
作者
Liu Y. [1 ]
Xiao H. [1 ]
Deng Q. [1 ]
Zhang Z. [1 ]
Sun X. [1 ]
Xiao Y. [1 ]
机构
[1] College of Mechanical and Electrical Engineering, East China Jiaotong University, Nanchang
来源
Nongye Gongcheng Xuebao | / 14卷 / 202-208期
关键词
Citrus; Citrus greening; Least square support vector machine; Machine learning; Models; Near infrared spectroscopy; Spectrum analysis;
D O I
10.11975/j.issn.1002-6819.2016.14.027
中图分类号
学科分类号
摘要
The feasibility was explored for identifying health, nutrient deficiency and citrus greening leaves based on near infrared (NIR) spectroscopy combined with machine learning methods. 232 samples were divided into the calibration and prediction sets for calibrating the models and accessing their performance according to the proportion of 3:1. The calibration set included citrus greening samples of 54, nutrient deficiency samples of 64 and healthy samples of 54. The prediction set included citrus greening samples of 21, nutrient deficiency samples of 17 and healthy samples of 22. The spectra of health, nutrient deficiency and citrus greening leaves were recorded in the wavelength range of 4000-9000 cm-1. After compared the representative spectra of health, nutrient deficiency and citrus greening, it was found that two significant differences appeared in the wavenumber bands of 5100 and 6880 cm-1. The peak around 6880 cm-1 was caused by the stretching vibration of O-H first overtone of water and sugar. The difference between the spectra of health and citrus greening leaves was significant around 6880 cm-1. The spectral intensity of citrus greening leaf was larger than health leaf. The ability of water absorption for citrus greening leaf was interfered with citrus greening. The peak around 5100 cm-1 was associated with the asymmetric vibration of N-H bond. Therefore, the spectral intensity of citrus greening leaf was lower than health leaf in the wavenumber of 5100 cm-1. This may be related to the loss of nutrient elements in leaves of citrus greening. The study used different preprocessing methods as first derivative, smoothing and multiple scattered correction for spectral calibration. The preprocssing method of first derivative had removed baseline drift and enlarged the role of feature information. And the amplification characteristics of information can also lead to high frequency noise. Therefore, the further pretreatment was conducted by the method of smoothing. Then the scattering effect caused by the uneven thickness of the leaves was eliminated used the multiple scattering correction. Compared with other methods, it was found that the combination of first derivative, smoothing and multiple scatter correction can effectively eliminated the baseline drift and scattering phenomena. The machine learning methods of partial least square discriminate analysis (PLS-DA) and least square support vector machine (LS-SVM) were used to develop the classification models for identifying health, nutrient deficiency and citrus greening leaves. The principal component analysis (PCA) method was applied to optimize the input vectors of PLS-DA and LS-SVM models compared with full spectra. The first 14 and 11 principal components (PCs) were used to the input vectors for PLS-DA and LS-SVM models, respectively. And the regularization factor and the type of kernel function were optimized by the two-step grid search method. Compared to PLS-DA model, LS-SVM model yielded the best results with accuracy rate of 100% for identifying the health, nutrient deficiency and citrus greening. The kernel function type and regularization factor (γ) of the best LS-SVM model were linear kernel function and 2.25. The experimental results showed that it was feasible to identify health, nutrient deficiency and citrus greening leaves by NIR spectroscopy coupled with machine learning method of LS-SVM. © 2016, Editorial Department of the Transactions of the Chinese Society of Agricultural Engineering. All right reserved.
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页码:202 / 208
页数:6
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  • [1] Shan Z., Guo H., Feng Z., Et al., Cloning and sequencing of Huanglongbing pathogen in shatianyou pomelo, Journal of Zhongkai University of Agriculture and Technology, 18, 4, pp. 45-48, (2015)
  • [2] Hu H., Yin Y., Zhang L., Et al., Detection of citrus huanglongbing by conventional and two fluore scence quantitative PCR assays, Scientia Agricultura Sinica, 39, 12, pp. 2491-2497, (2006)
  • [3] Li X., Li M., Won S.L., Et al., Visible-NIR spectral feature of citrus greening disease, Spectroscopy and Spectral Analysis, 34, 6, pp. 1553-1559, (2014)
  • [4] Pourreza A., Lee W.S., Etxeberria E., Et al., An evaluation of a vision-based sensor performance in Huanglongbing disease identification, Biosystems Engineering, 130, pp. 13-22, (2015)
  • [5] Garcia-Ruiz F., Sankaran S., Maja J.M., Et al., Comparison of two aerial imaging platforms for identification of Huanglongbing-infected citrus trees, Computers and Electronics in Agriculture, 91, pp. 106-115, (2013)
  • [6] Sankaran S., Maja J.M., Buchanon S., Et al., Huanglongbing (citrus greening) detection using visible, near infrared and thermal imaging techniques, Sensors, 13, pp. 2117-2130, (2013)
  • [7] Mishra A., Karimi D., Ehsani R., Et al., Evaluation of an active optical sensor for detection of Huanglongbing (HLB) disease, Biosystems Engineering, 110, pp. 302-309, (2011)
  • [8] Deng X.L., Gao Y.D., Chen J.C., Et al., Curent Situation of "Candidatus Liberibacter asiaticus" in Guangdong, China, where citrus Huanglongbing was first described, Journal of Integrative Agriculture, 11, 3, pp. 424-429, (2012)
  • [9] Sankaran S., Ehsani R., Comparison of visible-near infrared and mid-infrared spectroscopy for classification of Huanglongbing and Citrus Canker infected leaves, Agric Eng Int: CIGR Journal, 15, 3, pp. 75-80, (2013)
  • [10] Sankaran S., Ehsani R., Etxeberria E., Mid-infrared spectroscopy for detection of Huanglongbing (greening) in citrus leaves, Talanta, 83, pp. 574-581, (2010)