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首页> 外文期刊>Journal of VLSI signal processing >Text-Informed Audio Source Separation. Example-Based Approach Using Non-Negative Matrix Partial Co-Factorization
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Text-Informed Audio Source Separation. Example-Based Approach Using Non-Negative Matrix Partial Co-Factorization

机译:文本通知的音频源分离。使用非负矩阵部分协因子化的基于示例的方法

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摘要

The so-called informed audio source separation, where the separation process is guided by some auxiliary information, has recently attracted a lot of research interest since classical blind or non-informed approaches often do not lead to satisfactory performances in many practical applications. In this paper we present a novel text-informed framework in which a target speech source can be separated from the background in the mixture using the corresponding textual information. First, given the text, we propose to produce a speech example via either a speech synthesizer or a human. We then use this example to guide source separation and, for that purpose, we introduce a new variant of the non-negative matrix partial co-factorization (NMPCF) model based on a so-called excitation-filter-channel speech model. Such a modeling allows sharing the linguistic information between the speech example and the speech in the mixture. The corresponding multiplicative update (MU) rules are eventually derived for the parameters estimation and several extensions of the model are proposed and investigated. We perform extensive experiments to assess the effectiveness of the proposed approach in terms of source separation and alignment performance.
机译:所谓的有声音频源分离,其中分离过程由一些辅助信息指导,近来引起了很多研究兴趣,因为经典的盲法或无信息方法在许多实际应用中通常不能产生令人满意的性能。在本文中,我们提出了一种新颖的文本信息框架,其中可以使用相应的文本信息将目标语音源与背景中的背景分离。首先,给定文本,我们建议通过语音合成器或人工产生语音示例。然后,我们使用该示例来指导源分离,并为此目的,基于所谓的激励滤波器通道语音模型,引入了非负矩阵部分共分解(NMPCF)模型的新变体。这种建模允许在语音示例和混合物中的语音之间共享语言信息。最终得出相应的乘法更新(MU)规则进行参数估计,并提出并研究了模型的几个扩展。我们进行了广泛的实验,以评估提出的方法在源分离和对准性能方面的有效性。

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