首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part H. Journal of Engineering in Medicine >Hilbert-Huang transformation-based time-frequency analysis methods in biomedical signal applications
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Hilbert-Huang transformation-based time-frequency analysis methods in biomedical signal applications

机译:基于希尔伯特-黄变换的时频分析方法在生物医学信号应用中的应用

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摘要

Hilbert-Huang transformation, wavelet transformation, and Fourier transformation are the principal time-frequency analysis methods. These transformations can be used to discuss the frequency characteristics of linear and stationary signals, the time-frequency features of linear and non-stationary signals, the time-frequency features of non-linear and nonstationary signals, respectively. The Hilbert-Huang transformation is a combination of empirical mode decomposition and Hilbert spectral analysis. The empirical mode decomposition uses the characteristics of signals to adaptively decompose them to several intrinsic mode functions. Hilbert transforms are then used to transform the intrinsic mode functions into instantaneous frequencies, to obtain the signal's time-frequency-energy distributions and features. Hilbert- Huang transformation-based time-frequency analysis can be applied to natural physical signals such as earthquake waves, winds, ocean acoustic signals, mechanical diagnosis signals, and biomedical signals. In previous studies, we examined Hilbert-Huang transformation-based time-frequency analysis of the electroencephalogram FP1 signals of clinical alcoholics, and 'sharp I' wave-based Hilbert-Huang transformation time-frequency features. In this paper, we discuss the application of Hilbert-Huang transformation-based time-frequency analysis to biomedical signals, such as electroencephalogram, electrocardiogram signals, electrogastrogram recordings, and speech signals.
机译:Hilbert-Huang变换,小波变换和Fourier变换是主要的时频分析方法。这些变换可用于分别讨论线性和平稳信号的频率特性,线性和非平稳信号的时频特性,非线性和非平稳信号的时频特性。 Hilbert-Huang变换是经验模式分解和Hilbert谱分析的组合。经验模式分解利用信号的特征将其自适应地分解为几个固有模式函数。然后,使用希尔伯特(Hilbert)变换将本征模式函数转换为瞬时频率,以获得信号的时频能量分布和特征。基于希尔伯特-黄变换的时频分析可应用于自然物理信号,例如地震波,风,海洋声信号,机械诊断信号和生物医学信号。在先前的研究中,我们检查了基于Hilbert-Huang变换的临床酒精中毒者脑电图FP1信号的时频分析,以及基于“尖锐I”波的Hilbert-Huang变换的时频特征。在本文中,我们讨论了基于Hilbert-Huang变换的时频分析在生物医学信号中的应用,例如脑电图,心电图信号,胃电图记录和语音信号。

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