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Resonance-based signal decomposition: A new sparsity-enabled signal analysis method

机译:基于共振的信号分解:一种新的稀疏信号分析方法

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Numerous signals arising from physiological and physical processes, in addition to being non-stationary, are moreover a mixture of sustained oscillations and non-oscillatory transients that are difficult to disentangle by linear methods. Examples of such signals include speech, biomedical, and geophysical signals. Therefore, this paper describes a new nonlinear signal analysis method based on signal resonance, rather than on frequency or scale, as provided by the Fourier and wavelet transforms. This method expresses a signal as the sum of a 'high-resonance' and a 'low-resonance' component-a high-resonance component being a signal consisting of multiple simultaneous sustained oscillations; a low-resonance component being a signal consisting of non-oscillatory transients of unspecified shape and duration. The resonance-based signal decomposition algorithm presented in this paper utilizes sparse signal representations, morphological component analysis, and constant-Q (wavelet) transforms with adjustable Q-factor.
机译:除了不平稳之外,由生理和物理过程引起的许多信号也是持续振荡和非振荡瞬态的混合,很难通过线性方法解开。此类信号的示例包括语音,生物医学和地球物理信号。因此,本文描述了一种新的基于信号共振而非频率或尺度的非线性信号分析方法,该方法由傅立叶变换和小波变换提供。这种方法将信号表示为“高共振”和“低共振”分量之和-高共振分量是由多个同时发生的持续振荡组成的信号;低谐振分量是由形状和持续时间不确定的非振荡瞬变组成的信号。本文提出的基于共振的信号分解算法利用稀疏信号表示,形态成分分析和具有可调Q因子的恒定Q(小波)变换。

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