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Spectrum Conversion Using Prosodic Information

机译:使用韵律信息进行频谱转换

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摘要

For speaker conversion with spectral conversion using GMM, a method is proposed for adding information relating to prosody to the characteristic values and improving conversion precision. In conventional spectral conversion using GMM, only the unaltered spectral parameters are used as input information. However, the voice spectrum is generally related to the closeness of the base frequencies during speech, and therefore, improvement in the quality of the converted voice can be expected with the consideration of prosodic information at the time of conversion. Thus, a method is proposed for spectrum conversion with good precision which assumes the application to actual synthesis by rule, and performs GMM training using the prosodic information of the conversion source and conversion target. Also, the proposed spectrum conversion is applied to speech conversion in a voice synthesis framework. At this time, a method is proposed for preparing triphone joint vectors to ensure training data of a greater number of prosodic conditions using a parallel corpus. A physical evaluation using the cepstrum distance indicates that the use of prosodic information is effective in improving the precision of spectrum conversion. An auditory evaluation was performed of voice quality and speech characteristics after conversion with a conventional method and the proposed method, and indicated that the proposed method is effective in an auditory sense as well.
机译:对于使用GMM进行频谱转换的说话人转换,提出了一种将与韵律有关的信息添加到特征值并提高转换精度的方法。在使用GMM的常规光谱转换中,仅将未更改的光谱参数用作输入信息。然而,语音频谱通常与语音期间基本频率的接近度有关,因此,考虑到转换时的韵律信息,可以预期转换后的语音质量的提高。因此,提出了一种高精度的频谱转换方法,该方法假定规则地将其应用于实际合成,并且使用转换源和转换目标的韵律信息进行GMM训练。而且,所提出的频谱转换被应用于语音合成框架中的语音转换。这时,提出了一种用于准备三音联合矢量以确保使用并行语料库的大量韵律条件的训练数据的方法。使用倒谱距离的物理评估表明,韵律信息的使用可有效提高频谱转换的精度。使用常规方法和所提出的方法进行转换之后的语音质量和语音特性的听觉评估,并且表明所提出的方法在听觉上也是有效的。

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