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柑橘黑斑病反射光譜特性與染病果實檢測方法研究
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國家高技術(shù)研究發(fā)展計劃(863計劃)項目(2013AA102304)和國家自然科學(xué)基金項目(61473237)


Reflectance Spectral Characteristics of Black Spot Disease and Disease Detection Method for Citrus
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    摘要:

    通過對光譜儀采集的340~1030nm柑橘健康與感染黑斑區(qū)域光譜進行分析,,在探明健康和黑斑病不同癥狀光譜特性的基礎(chǔ)上,,提出主成分分析結(jié)合特征排序的方法,,選擇出可識別染病與健康樣本的最優(yōu)波長(525nm)建立SMO分類模型;基于序列浮動前向選擇方法優(yōu)選出4個特征波長(678、740、794、879nm),,建立C4.5算法識別柑橘黑斑病3種癥狀的方法。試驗結(jié)果表明,,用525nm波長建立的SMO分類模型對健康和染病果樣本的識別率達99.37%,,硬斑型、破裂型和黑斑型癥狀的識別率分別為81.85%,、71.88%和67.57%,, 3種癥狀的平均識別率為73.77%,比前人方法提高了12.77個百分點,。

    Abstract:

    Citrus black spot (CBS), which is one of the most common fungal diseases of citrus, causes lesions on the rind and early fruit drop before its mature stage. This disease can significantly reduce crop yield, making blemished fruit unsuitable for market. The objective of this research was to study the reflectance spectral characteristics of healthy and infected citrus fruits to identify diseased fruit from healthy ones. A portable USB2000+spectrometer was used to acquire spectral reflectance of citrus fruit in the laboratory with wavelength ranged from 340nm to 1030nm. However, the spectra contained thousands of wavelengths, and many of them would be considered as redundant, which may even decrease the classification accuracy. To reduce the data dimensionality and select the useful bands for further application, principal components analysis (PCA) and four band ranking methods, i.e., T-test, Kullback—Leibler distance, Chernoff bound and receiver operating characteristic (ROC) were applied. One important wavelength (525nm) was selected and used to classify healthy and CBS infected fruits. Sequential minimal optimization (SMO), radical basis function network (RBF), and C4.5 classification methods were used to evaluate the performance of the selected band, and SMO achieved the highest accuracy of 99.37%. In order to compare the performance of classification accuracies according to optimal wavelengths selected by using different methods, two other methods, i.e., sequential floating forward selection (SFFS) and mutual information (MI), were applied. Wavelengths of 527nm and 917nm were selected based on SFFS, while the MI method selected 513~531nm as the optimal wavelength range, and the highest recognition accuracy was 99.06%, which was lower than that of using 525nm. Then SFFS was applied to find the optimal wavelengths for further distinguishing three CBS symptoms. C4.5 method was used to evaluate the performance of distinguishing CBS infected and healthy fruits based on selected wavelengths, and the highest overall classification accuracy was 73.77%.

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趙川源,何東健,LEE Won Suk.柑橘黑斑病反射光譜特性與染病果實檢測方法研究[J].農(nóng)業(yè)機械學(xué)報,2017,48(5):356-362,,355. ZHAO Chuanyuan, HE Dongjian, LEE Won Suk. Reflectance Spectral Characteristics of Black Spot Disease and Disease Detection Method for Citrus[J]. Transactions of the Chinese Society for Agricultural Machinery,2017,48(5):356-362,355.

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  • 收稿日期:2017-02-13
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  • 在線發(fā)布日期: 2017-05-10
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