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Observability of Spectral Components beyond Nyquist Limit in Nonuniformly Sampled Signals

机译:非均匀采样信号中超出奈奎斯特极限的频谱分量的可观察性

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Identification of a signal component with the frequency exceeding the Nyquist limit is a challenging problem in signal theory as well as in some specific applications areas like astronomy and biosciences. A consequence of the well-known sampling theorem for a uniformly sampled signal is that the spectral component above the Nyquist limit is aliased into lower frequency range, making a distinction between true and aliased components impossible. The nonuniform sampling, however, offers a possibility to reduce aliased components and uncover information above the Nyquist limit. In this paper, we provide a theoretical analysis of the aliased components reduction in the nonparametric periodogram for two sampling schemes: the random sampling pattern and the sampling pattern generated by the integral pulse frequency modulation (IPFM), the latter widely accepted as the heart rate timing model. A general formula that relates the variance of timing deviations from a regular scheme with the aliased component suppression is proposed. The derived relation is illustrated by Lomb-Scargle periodograms applied on simulated data. Presented experimental data consisting of the respiration signal derived from the electrocardiogram and the heart rate signal also support possibility to detect frequencies above the Nyquist limit in the condition known as the cardiac aliasing.
机译:频率超过奈奎斯特极限的信号分量的识别是信号理论以及天文学和生物科学等某些特定应用领域中的一个难题。对于均匀采样的信号,众所周知的采样定理的结果是,高于奈奎斯特极限的频谱分量被混叠到较低的频率范围内,从而无法区分真实分量和混叠分量。但是,非均匀采样提供了减少混叠分量并发现超过奈奎斯特极限的信息的可能性。在本文中,我们对两种采样方案的非参数周期图中的混叠分量减少进行了理论分析:随机采样模式和积分脉冲频率调制(IPFM)生成的采样模式,后者被广泛认为是心率时序模型。提出了将规则偏差与常规方案的定时偏差与混叠分量抑制联系起来的一般公式。导出的关系通过应用于模拟数据的Lomb-Scargle周期图进行说明。包含由心电图得出的呼吸信号和心率信号组成的实验数据也支持在被称为心脏混叠的情况下检测高于奈奎斯特极限的频率的可能性。

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