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Underdetermined blind separation of weak sparse sources via matrix transform layer by layer in the Time-Frequency domain

机译:通过矩阵变换层在时频域中通过矩阵变换层被确定的弱稀疏源的盲分离

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This paper presents a novel two-step approach for underdetermined blind source separation in the time-frequency domain. First, the single-source-points (SSPs), each of that is occupied by a single source, are detected through identifying the Time-Frequency (TF) points of observations using the complex value phase; the mixing matrix is then estimated accurately by employing K-means method among those SSPs with high energies. In the separation procedure, we find the time-frequency points that incorporate one source, two sources, and so on, through matrix transforms. Then, these sources at the points can be solved out explicitly under a weak sparse condition. Remarkably, the method holds some advantages, such as simplicity, parallelism, and possibility that can be extended to one source extraction. Detailed experimental results also show the validity of the method.
机译:本文介绍了时频域内有未确定的盲源分离的新型两步方法。首先,通过使用复数相位识别观察的时间频率(TF)点来检测单源点(SSP),每个都是由单个源占据的。然后通过在具有高能量的SSP中采用K-Means方法来精确地估计混合矩阵。在分离过程中,我们发现通过矩阵变换找到包含一个源,两个源等的时频点。然后,可以在弱稀疏条件下明确地解决这些点处的这些源。值得注意的是,该方法具有一些优点,例如简单,并行性,以及可以扩展到一个源提取的可能性。详细的实验结果还显示了该方法的有效性。

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