• Spectroscopy and Spectral Analysis
  • Vol. 34, Issue 4, 1003 (2014)
ZHOU Li-na1、2、*, YU Hai-ye1, ZHANG Lei1, REN Shun1, SUI Yuan-yuan1, and YU Lian-jun3
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • 3[in Chinese]
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    DOI: 10.3964/j.issn.1000-0593(2014)04-1003-04 Cite this Article
    ZHOU Li-na, YU Hai-ye, ZHANG Lei, REN Shun, SUI Yuan-yuan, YU Lian-jun. Rice Blast Prediction Model Based on Analysis of Chlorophyll Fluorescence Spectrum[J]. Spectroscopy and Spectral Analysis, 2014, 34(4): 1003 Copy Citation Text show less

    Abstract

    In order to detect rice blast more rapidly, accurately and nondestructively, the identification and early warning models of rice blast were established in the present research. First of all, rice blast was divided into three grades according to the relative area of disease spots in rice leaf and laser-induced chlorophyll fluorescence spectra of rice leaves at different disease levels were measured in the paddy fields. Meanwhile, 502~830 nm bands of laser-induced chlorophyll fluorescence spectra were selected for the study of rice blast. Savitzky-Golay(SG) smoothing and First Derivative Transform(FDT) were applied for the pretreatment of laser-induced chlorophyll fluorescence spectra. Then the method of Principal Components Analysis(PCA) was used to achieve the dimension reduction on spectral information, three principal components whose variance are greater than 1 and cumulative credibility is 99.924% were extracted by this method. Furthermore, the tentative data were divided into calibration set and validation set, the levels of rice blast were taken as the predictors. Combined with the calibration set which contains the disease and spectral information of 133 leaves, Discriminant Analysis(DA), Multiple Logistic Regression Analysis(MLRA) and Multilayer Perceptron(MLP) were used respectively to establish the identification and early warning models of rice blast. The Prediction examinations of the three models were made based on the validation set which contains the disease and spectral information of 89 leaves. The results show that all the models of PCA-DA, PCA-MLRA and PCA-MLP can carry on the prediction of rice blast, and the average prediction accuracy of PCA-MLP prediction model is 91.7% which is improved compared with PCA- DA and PCA- MLRA.
    ZHOU Li-na, YU Hai-ye, ZHANG Lei, REN Shun, SUI Yuan-yuan, YU Lian-jun. Rice Blast Prediction Model Based on Analysis of Chlorophyll Fluorescence Spectrum[J]. Spectroscopy and Spectral Analysis, 2014, 34(4): 1003
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