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A Combination of Pre-Trained Approaches and Generic Methods for an Improved Speech Enhancement

机译:预训练方法和通用方法的组合,用于改进语音增强

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To improve the quality of single-channel speech enhancement algorithms, various approaches include additional prior knowledge about speech, e.g., in the form of pre-trained speech models. In this paper, we consider a vector Taylor series based approach with a low-rank speech model. While employing a low-rank speech model keeps the complexity feasible, only speech spectral envelopes are represented and noise reduction between spectral harmonics is not possible. To counteract this issue, we propose a combination of generic, single-channel enhancement methods and the pre-trained vector Taylor series approach. Compared to a competing harmonic post-filter approach, the proposed combination is derived within a statistical framework and yields a better quality for the enhanced signal. This is verified using instrumental quality measures.
机译:为了提高单通道语音增强算法的质量,各种方法包括关于语音的其他先验知识,例如以预训练语音模型的形式。在本文中,我们考虑了基于矢量泰勒级数的低秩语音模型方法。尽管采用低秩语音模型可以保持复杂度,但仅表示语音频谱包络,并且无法降低频谱谐波之间的噪声。为了解决这个问题,我们提出了通用的单通道增强方法和预训练的矢量泰勒级数方法的组合。与竞争性谐波后置滤波器方法相比,所提出的组合是在统计框架内得出的,并为增强信号产生了更好的质量。使用仪器质量度量对此进行了验证。

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