利用代码集集成深度神经网络进行语音增强的扬声器适配。

IF 1.2 Q3 ACOUSTICS JASA express letters Pub Date : 2024-11-01 DOI:10.1121/10.0034308
B Chidambar, D Hanumanth Rao Naidu
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引用次数: 0

摘要

与传统的语音增强方法相比,基于深度神经网络(DNN)的语音增强技术在处理非稳态噪声方面表现出更优越的性能。然而,由于测试和训练条件不匹配,它们的性能往往大打折扣。在这项工作中,为语音增强引入了一种代码集集成深度神经网络(CI-DNN)方法,该方法通过将现有的扬声器适配代码集与 DNN 结合使用,缓解了这种不匹配问题。与相应的独立于说话人的 DNN 相比,所提出的 CI-DNN 具有更好的语音增强性能。CI-DNN 方法主要涉及 DNN 的后处理操作,因此适用于任何 DNN 架构。
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Speaker adaptation using codebook integrated deep neural networks for speech enhancement.

Deep neural network (DNN) based speech enhancement techniques have shown superior performance compared to the traditional speech enhancement approaches in handling nonstationary noise. However, their performance is often compromised as a result of mismatch between their testing and training conditions. In this work, a codebook integrated deep neural network (CI-DNN) approach is introduced for speech enhancement, which mitigates this mismatch by employing existing speaker adapted codebooks with a DNN. The proposed CI-DNN demonstrates better speech enhancement performance compared to the corresponding speaker independent DNNs. The CI-DNN approach essentially involves a post processing operation for DNN and, hence, is applicable to any DNN architecture.

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The JIBO Kids Corpus: A speech dataset of child-robot interactions in a classroom environment. The perceptual distinctiveness of the [n-l] contrast in different vowel and tonal contexts. Ambient noise source characterization using spectral, coherence, and directionality estimates at Kongsfjorden. Speaker adaptation using codebook integrated deep neural networks for speech enhancement. Fundamental frequency predominantly drives talker differences in auditory brainstem responses to continuous speech.
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