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Application of Hyperspectral Imaging in the Diagnosis of Acanthopanax Senticosus Black Spot Disease |
ZHAO Sen, FU Yun*, CUI Jiang-nan, LU Ye, DU Xu-dong, LI Yong-liang |
School of Electro-Optical Engineering, Changchun University of Science and Technology, Changchun 130022, China |
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Abstract Taking the leaves of Acanthopanax acanthopanax infected with black spot disease as an example, the study of plant disease detection by spectral technology provides a research basis for early screening and precise treatment of medicinal plant diseases. The experiment aimed to realize the supervised classification and identification of plant diseases by hyperspectral imaging technology. The experimental procedure is as follows: First, the leaf samples of Acanthopanax japonicus were collected using the hyperspectral imaging technique. After the spectral data were preprocessed by removing light and dark noise and smoothing, the data dimension was reduced using principal component analysis. Then, a support vector machine (SVM) based on different kernel functions was used to establish a classification model separately. Finally, the overall classification accuracy, Kappa coefficient and other factors were used to evaluate different kernel functions’ influence on the classifier performance. According to the leaf’s surface characteristics, the leaf was divided into four kinds of samples: healthy bright part, healthy dark part, mild disease and severe disease. It can be seen that the healthy sample of Acanthopanax senticosus had a significant peak at 540 nm, and the spectral curve rose sharply at 620~680 nm; while the spectral reflectance of disease samples showed a slow and steady rising trend. The above features could completely distinguish healthy samples with close reflection intensity from serious disease samples on the image. After comparison, it was found that the first four principal components (PC1, PC2, PC3, PC4) have certain differences in the classification results. The main differences were that PC1 contains much information and can better distinguish various samples; PC2 showed a cross-confusion between bright healthy samples and seriously diseased samples; PC3 was a supplement to PC2, which can find mild diseased areas; PC4 contribution rate was only 0.19%, and it could still accurately identify serious diseased areas. The differences of principal component components in showing various sample characteristics can be used to reference complex sample classification. Compared with the classification accuracy of SVM modeling based on different kernel functions, the results showed that the linear kernel function’s recognition process was greatly affected by light intensity reflection. The training accuracy of the Sigmoid kernel function was easily affected by the size of the data set, and there were certain errors in recognition of healthy light or dark and minor diseases. The effect of polynomial kernel function and radial basis kernel function was good, and the accuracy of the polynomial kernel was higher, which was 92.77%. Research showed that the hyperspectral imaging technology could accurately identify the healthy and diseased leaves of Acanthopanax senticosus and provided a new method for the automatic diagnosis of diseases of medicinal plant leaves.
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Received: 2020-06-06
Accepted: 2020-09-17
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Corresponding Authors:
FU Yun*
E-mail: linda_fy@cust.edu.cn
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