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A Complete End-to-End Speaker Verification System Using Deep Neural Networks: From Raw Signals to Verification Result

机译:使用深神经网络的完整端到端扬声器验证系统:从原始信号到验证结果

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End-to-end systems using deep neural networks have been widely studied in the field of speaker verification. Raw audio signal processing has also been widely studied in the fields of automatic music tagging and speech recognition. However, as far as we know, end-to-end systems using raw audio signals have not been explored in speaker verification. In this paper, a complete end-to-end speaker verification system is proposed, which inputs raw audio signals and outputs the verification results. A pre-processing layer and the embedded speaker feature extraction models were mainly investigated. The proposed pre-emphasis layer was combined with a strided convolution layer for pre-processing at the first two hidden layers. In addition, speaker feature extraction models using convolutionallayer and long short-term memory are proposed to be embedded in the proposed end-to-end system.
机译:使用深神经网络的端到端系统已经广泛研究了扬声器验证领域。在自动音乐标记和语音识别领域也已经广泛研究了原始音频信号处理。但是,据我们所知,扬声器验证中尚未探讨使用原始音频信号的端到端系统。在本文中,提出了一个完整的端到端扬声器验证系统,该系统输入了原始音频信号并输出​​验证结果。主要研究了预处理层和嵌入式扬声器特征提取模型。将所提出的预加重层与冲击卷积层组合,用于在前两个隐藏层的预处理。此外,扬声器功能提取模型采用卷积虚体和长短期存储器的提取模型被嵌入到所提出的端到端系统中。

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