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Identification of Fusarium Head Blight in Winter Wheat Ears Using Continuous Wavelet Analysis

机译:连续小波分析用于冬小麦穗枯萎病的鉴定

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摘要

head blight in winter wheat ears produces the highly toxic mycotoxin deoxynivalenol (DON), which is a serious problem affecting human and animal health. Disease identification directly on ears is important for selective harvesting. This study aimed to investigate the spectroscopic identification of head blight by applying continuous wavelet analysis (CWA) to the reflectance spectra (350 to 2500 nm) of wheat ears. First, continuous wavelet transform was used on each of the reflectance spectra and a wavelet power scalogram as a function of wavelength location and the scale of decomposition was generated. The coefficient of determination between wavelet powers and the disease infestation ratio were calculated by using linear regression. The intersections of the top 5% regions ranking in descending order based on the values and the statistically significant ( -value of -test < 0.001) wavelet regions were retained as the sensitive wavelet feature regions. The wavelet powers with the highest values of each sensitive region were retained as the initial wavelet features. A threshold was set for selecting the optimal wavelet features based on the coefficient of correlation obtained via the correlation analysis among the initial wavelet features. The results identified six wavelet features which include (471 nm, scale 4), (696 nm, scale 1), (841 nm, scale 4), (963 nm, scale 3), (1069 nm, scale 3), and (2272 nm, scale 4). A model for identifying head blight based on the six wavelet features was then established using Fisher linear discriminant analysis. The model performed well, providing an overall accuracy of 88.7% and a kappa coefficient of 0.775, suggesting that the spectral features obtained using CWA can potentially reflect the infestation of head blight in winter wheat ears.
机译:冬小麦耳朵的枯萎病会产生剧毒的霉菌毒素脱氧雪腐酚(DON),这是一个严重的问题,影响人类和动物的健康。直接在耳朵上识别疾病对于选择性收获很重要。本研究旨在通过对小麦耳朵的反射光谱(350至2500 nm)应用连续小波分析(CWA)来研究头部枯萎病的光谱鉴定。首先,在每个反射光谱上使用连续小波变换,然后将小波功率比例图作为波长位置的函数,并生成分解尺度。通过线性回归计算小波功率与疾病侵染率之间的确定系数。基于这些值和统计学上显着的(-test <0.001的-值)小波区域,按降序排列的前5%区域的交集被保留为敏感小波特征区域。每个敏感区域具有最高值的小波功率被保留为初始小波特征。设定阈值以基于通过初始小波特征之间的相关性分析获得的相关系数来选择最佳小波特征。结果确定了六个小波特征,包括(471 nm,比例4),(696 nm,比例1),(841 nm,比例4),(963 nm,比例3),(1069 nm,比例3)和( 2272 nm,比例4)。然后,使用Fisher线性判别分析,建立了基于六个小波特征的头部枯萎病识别模型。该模型运行良好,提供了88.7%的总体准确度和0.775的卡伯系数,这表明使用CWA获得的光谱特征可能反映了冬小麦耳部枯萎病的侵扰。

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