Frequency Characteristics Extraction of Infected Wheat BPE Signals Based on Bispectrum Analysis and High-Order Spectrum Distribution

L. Qiao, Manman Jia, Bin Wei, Ziqi Liu, Yao Qin
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Abstract

Spontaneous biophoton emission (BPE) signals of wheat have strong nonlinear and non-Gaussian, the traditional time-frequency analysis method cannot effectively analyze the spontaneous BPE signals of wheat. This study uses the bispectral analysis technique to process BPE signals for the first time and extracts the high-order spectrum distribution characteristics of normal wheat and infected wheat. By estimating the bispectrum, the slice bispectrum, and the characteristic parameters of the diagonal slice spectrum and the horizontal slice spectrum, the bispectral distribution characteristics of the spontaneous BPE signal of normal wheat and wheat that has been infected by insects are obtained. Bispectral analysis can not only eliminate the interference of Gaussian noise, but also elucidate the amplitude and phase information of the signal. Experiments show that the extracted parameters of the BPE signals yield a detailed spectral distribution and show differences between infected wheat and normal wheat. The results of this study provide a comprehensive description of the characteristics of infected wheat and provide an experimental and theoretical basis for the detection of insects in grain.
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基于双谱分析和高阶谱分布的小麦感染BPE信号频率特征提取
小麦自发光子发射(BPE)信号具有较强的非线性和非高斯性,传统时频分析方法无法有效分析小麦自发光子发射信号。本研究首次采用双谱分析技术对BPE信号进行处理,提取正常小麦和病小麦的高阶谱分布特征。通过估计双谱、切片双谱以及对角切片谱和水平切片谱的特征参数,得到了正常小麦和受虫害小麦自发BPE信号的双谱分布特征。双谱分析不仅可以消除高斯噪声的干扰,而且可以阐明信号的幅值和相位信息。实验表明,提取的BPE信号参数得到了详细的光谱分布,并显示了感染小麦与正常小麦之间的差异。本研究结果全面描述了小麦侵染病害的特征,为粮食害虫检测提供了实验和理论依据。
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