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Single Channel Speech Separation Using an Efficient Model-based Method

机译:使用基于模型的有效方法进行单通道语音分离

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The subject of extracting multiple speech signals from a single mixed recording, which is referred to single channel speech separation, has received considerable attention in recent years and many model-based techniques have been proposed. A major problem of most of these systems is their inability to deal with the situation in which the signals are combined at different levels of energies because they assume that the data used in the test and training phase have equal levels of energies, where, this assumption hardly occurs in reality. Our proposed method based on MIXMAX approximation and sub-section vector quantization (VQ) is an attempt to overcome this limitation. The proposed technique is compared with a technique in which a gain adapted minimum mean square error estimator is derived to estimate the separated signals. Through experiments we show that our proposed method outperforms this method in terms of SNR results and also reduces computational complexity.
机译:从单个混合记录中提取多个语音信号的主题,即单通道语音分离,近年来受到了极大的关注,并且已经提出了许多基于模型的技术。这些系统中大多数系统的主要问题是它们无法处理信号在不同能量水平下合并的情况,因为它们假定测试和训练阶段中使用的数据具有相同能量水平,其中,这种假设在现实中几乎不会发生。我们基于MIXMAX逼近和子部分矢量量化(VQ)提出的方法是试图克服这一局限性的尝试。将所提出的技术与其中获得增益适应的最小均方误差估计器以估计分离的信号的技术进行比较。通过实验表明,我们提出的方法在信噪比结果方面优于该方法,并且降低了计算复杂度。

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