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Speaker Independent Single Channel Source Separation Using Sinusoidal Features

机译:扬声器独立的单通道源分离使用正弦特征

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Model-based approaches to achieve Single Channel Source Separation (SCSS) have been reasonably successful at separating two sources. However, most of the currently used model-based approaches require pre-trained speaker specific models in order to perform the separation. Often, insufficient or no prior training data may be available to develop such speaker specific models, necessitating the use of a speaker independent approach to SCSS. This paper proposes a speaker independent approach to SCSS using sinusoidal features. The algorithm develops speaker models for novel speakers from the speech mixtures under test, using prior training data available from other speakers. An iterative scheme improves the models with respect to the novel speakers present in the test mixtures. Experimental results indicate improved separation performance as measured by the Perceptual Evaluation of Speech Quality (PESQ) scores of the separated sources.
机译:在分离两个来源时,基于模型的实现单通道源分离(SCSS)的方法在分离两个来源时已经合理成功。但是,大多数当前使用的基于模型的方法都需要预先训练的扬声器特定模型以执行分离。通常,不足或未在现有的训练数据中可以开发出这样的扬声器特定模型,所以需要使用扬声器独立方法来进行SCSS。本文提出了一种使用正弦特征的SCSS独立方法。该算法使用其他扬声器可获得的现有培训数据,从正在测试的语音混音中开发用于新颖扬声器的扬声器模型。迭代方案在测试混合物中存在的新颖扬声器提高了模型。实验结果表明,通过言语质量(PESQ)分数的感知评估来测量的分离性能改善。

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