非平稳信号分析的新方法。

Robert A Stepien
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引用次数: 11

摘要

背景:用符号方法分析信号包括计算信号复杂度的度量,例如信息熵或Lempel-Ziv算法复杂度。为了构造这些熵测度,可以使用表示分析信号的符号分布。结果:我们引入了一种新的信号特征,即序列谱,它适用于分析包括生物信号在内的广泛信号群。本文简要回顾了人工信号的分析,显示出与生物信号相似的特征。最后给出了一个用序列谱分析不同睡眠阶段脑电信号的实例。结论:序列谱是一般描述非平稳信号的有效工具,它比傅里叶谱具有优势。序贯谱能够评估癫痫患者记录的脑电图信号的病理变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

New method for analysis of nonstationary signals.

New method for analysis of nonstationary signals.

New method for analysis of nonstationary signals.

New method for analysis of nonstationary signals.

Background: Analysis of signals by means of symbolic methods consists in calculating a measure of signal complexity, for example informational entropy or Lempel-Ziv algorithmic complexity. For construction of these entropic measures one uses distributions of symbols representing the analyzed signal.

Results: We introduce a new signal characteristic named sequential spectrum that is suitable for analysis of the wide group of signals, including biosignals.The paper contains a brief review of analyses of artificial signals showing features similar to those of biosignals. An example of using sequential spectrum for analyzing EEG signals registered during different stages of sleep is also presented.

Conclusions: Sequential spectrum is an effective tool for general description of nonstationary signals and it its advantage over Fourier spectrum. Sequential spectrum enables assessment of pathological changes in EEG-signals recorded in persons with epilepsy.

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