多分量非平稳混合信号中基于熵的分量时间支持检测的二次tfd比较

N. Saulig, V. Sucic, B. Boashash, D. Seršić
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引用次数: 2

摘要

分离由一个或多个信号源产生的不同信号分量,是许多信号处理应用中遇到的问题。本文提出了一种基于信号时频分布(TFD)的峰值检测和提取技术的全自动待定盲源分离方法。局部分量数的信息是由TFD短期rsamnyi熵获得的。它还允许在时频平面上检测分量时间支持,而不需要对分量幅度进行预定义阈值。这种方法可以在不需要事先了解信号的情况下提取不同的信号成分。该方法还可作为二次型tfd比较的质量标准。本文报道了不同tfd的合成数据和实际数据的结果,包括最近引入的扩展修正B分布。
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A comparison of quadratic TFDs for entropy based detection of components time supports in multicomponent nonstationary signal mixtures
Separation of different signal components, produced by one or more sources, is a problem encountered in many signal processing applications. This paper proposes a fully automatic undetermined blind source separation method, based on a peak detection and extraction technique from a signal time-frequency distribution (TFD). Information on the local number of components is obtained from the TFD Short-term Rényi entropy. It also allows to detect components time supports in the time-frequency plane, with no need for predefined thresholds on the components amplitude. This approach allows to extract different signal components without prior knowledge about the signal. The method is also used as a quality criterion to compare Quadratic TFDs. Results for synthetic and real data are reported for different TFDs, including the recently introduced Extended Modified B distribution.
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