说话人生理结构与声语音信号的关系:基于频率型注意神经网络的数据驱动研究

Kai Li, Xugang Lu, M. Akagi, J. Dang, Sheng Li, M. Unoki
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引用次数: 1

摘要

通过考虑共振和反共振特性,定量揭示说话人生理结构与声语音信号的关系,有助于从语音信号中提取有效的说话人判别信息(SDI)。传统的基于f比的量化方法只单独考虑每个频段的声语音功率。我们提出了一种新的基于频率的注意力神经网络来学习频率分量对说话人身份的非线性组合效应。学习结果表明,鼻腔引起的反共振频率是F-ratio法无法揭示的另一个说话人识别的重要因素。为了进一步验证我们的研究结果,我们设计了一种基于学习结果的非均匀子带处理策略用于说话人特征提取,并进行了自动说话人验证(ASV)。ASV结果证实,进一步强调反共振频率区域周围的频谱结构可以增强说话人的识别能力。
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Relationship Between Speakers' Physiological Structure and Acoustic Speech Signals: Data-Driven Study Based on Frequency-Wise Attentional Neural Network
Quantitatively revealing the relationship between speakers' physiological structure and acoustic speech signals by considering the properties of resonance and antiresonance can help us to extract effective speaker discriminative information (SDI) from speech signals. The conventional quantification method based on F-ratio only considers the power of acoustic speech in each frequency band independently. We propose a novel frequency-wise attentional neural network to learn the nonlinear combined effect of the frequency components on speaker identity. The learned results indicate that antiresonance frequency induced by the nasal cavity is another essential factor for speaker discrimination that the F-ratio method could not reveal. To further evaluate our findings, we designed a non-uniform subband processing strategy based on the learned results for speaker feature extraction and did automatic speaker verification (ASV). The ASV results confirmed that further emphasizing the spectral structure around the antiresonance frequency region can enhance speaker discrimination.
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