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Monaural speech separation based on linear regression optimized using gradient descent

机译:基于梯度下降优化的线性回归的单声道语音分离

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Monaural speech separation (MSS) is useful for many real-world applications. In this work, we propose a novel method for MSS based on the observation that a composite speech signals can be modeled as the linear summation of each speaker with respect to participation coefficients. Hence, speech signals are separated using linear regression. Partial derivative with respect to each variable is then used to perform gradient descent in order to optimize the estimation and therefore the separation. The proposed speech separation method for is applicable to known speakers.The proposed method was assessed using metrics characterized by good correlation coefficients with subjective listening tests. Evaluation results reveal the effectiveness of the proposed approach.
机译:单声道语音分离(MSS)在许多实际应用中很有用。在这项工作中,我们提出了一种基于MSS的新颖方法,即可以将复合语音信号建模为每个说话者相对于参与系数的线性求和。因此,使用线性回归来分离语音信号。然后,针对每个变量的偏导数用于执行梯度下降,以优化估计值并因此优化分离。所提出的语音分离方法适用于已知的讲话者。该方法是使用具有良好相关系数的指标和主观听力测试来评估的。评估结果表明了该方法的有效性。

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