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A Spectro-temporal Technique for Estimating Aperiodicity and Voiced/unvoiced Decision Boundaries of Speech Signals

机译:一种估计语音信号的非周期性和浊音/解判界限的光谱 - 时间技术

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In contrast to a 1-D short-time analysis of speech, 2-D approaches aim at characterizing the speech signal attributes jointly in time and frequency. In this paper, we focus on the quasi-periodicity of a voiced spectro-temporal patch and quantify it by proposing an aperiodicity measure defined using the underlying frequency modulations in the patch. We further propose a time-frequency aperiodicity map obtained by overlapping and adding the aperiodicity measures across patches. The proposed aperiodicity map is utilized to obtain band-wise aperiodicity parameters, which are essential for high-quality speech synthesis. The aperiodicity in unvoiced patches is addressed by identifying them using the coherence of the patch. In addition, the proposed technique also provides voiced/unvoiced decisions boundaries of a speech signal. The effectiveness of the proposed band-wise aperiodicity parameters and voiced/unvoiced decisions is verified by incorporating them in an existing state-of-the-art vocoder for speech synthesis. Subjective listening tests show that the quality of the reconstructed speech is on par with that of the state-of-the-art WORLD vocoder in terms of mean opinion score, indicating that spectrotemporal approaches are highly promising for speech analysis and synthesis applications.
机译:相反,与语音的1-D短时分析,2-D接近的目的在于在时间和频率的共同表征语音信号属性。在本文中,我们专注于声光扫描斑块的准周期性,并通过提出使用贴片中的底层频率调制定义的非周期性测量来量化它。我们进一步提出了通过重叠和添加斑块的非周期性测量而获得的时频积分率图。所提出的非周期性图用于获得带有明智的非周期性参数,这对于高质量的语音合成至关重要。通过使用补丁的一致性识别它们来解决清音斑块的非周期性。此外,所提出的技术还提供了语音信号的浊音/清晰的决策边界。通过将它们纳入现有的最先进的声码器进行语音合成,验证了所提出的乐队明智的积分性参数和浊音/清晰决定的有效性。主观听力测试表明,重建语音的质量与最先进的世界声码器在平均意见评分方面,表明光谱仪方法对语音分析和合成应用具有高度前途。

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