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Single-Channel Separation Between Stationary and Non-stationary Signals Using Relevant Information

机译:使用相关信息的静止和非静止信号之间的单通道分离

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We propose a novel unsupervised single-channel approach to separate between stationary and non-stationary signals. To this, we enhance data representation through its time-frequency space, where stationarity is defined based on information theory. Then, we search for the projection of the time-frequency representation that is as stationarity as possible, but preserving most of the data information. The proposed approach validated on synthetic data. As performance measure, we use the correlation coefficient and the mean squared error between the original and the estimated stationary composing signals. Obtained results are compared against the baseline non-negative matrix factorization that separates dynamics from the time-frequency representation. As a result, our approach gets better performance even if assuming low power ratios, i.e., non-stationary signal power is higher or even equal than the stationary signal power.
机译:我们提出了一种小型无监督的单通道方法来分离静止和非静止信号。为此,我们通过其时频空间增强数据表示,其中基于信息理论来定义具有安合法性的。然后,我们搜索尽可能平静性的时频表示的投影,但保留了大多数数据信息。综合数据验证的拟议方法。作为性能测量,我们使用了原始系数和估计的静止构图之间的相关系数和平均平方误差。将获得的结果与基线非负矩阵分解进行比较,从而将动态与时频表示分离。结果,即使假设低功率比,即非固定信号功率,我们的方法也能获得更好的性能,即,非静止信号功率高于静止信号功率。

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