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An Evaluation of Parameter Generation Methods with Rich Context Models in HMM-Based Speech Synthesis

机译:基于HMM的语音合成中具有丰富上下文模型的参数生成方法的评估

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In this paper, we propose parameter generation methods using rich context models in HMM-based speech synthesis as yet another hybrid method combining HMM-based speech synthesis and unit selection synthesis. In the traditional HMM-based speech synthesis, generated speech parameters tend to be excessively smoothed and they cause muffled sounds in synthetic speech. To alleviate this problem, several hybrid methods have been proposed. Although they significantly improve quality of synthetic speech by directly using natural waveform segments, they usually lose flexibility in converting synthetic voice characteristics. In the proposed methods, rich context models representing individual acoustic parameter segments are reformed as GMMs and a speech parameter sequence is generated from them using the parameter generation algorithm based on the maximum likelihood criterion. Since a basic framework of the proposed methods is still the same as the traditional framework, the capability of flexibly modeling acoustic features remains. We conduct several experimental evaluations of the proposed methods from various perspectives. The experimental results demonstrate that the proposed methods yield significant improves in quality of synthetic speech.
机译:在本文中,我们提出了在基于HMM的语音合成中使用丰富上下文模型的参数生成方法,这是将基于HMM的语音合成与单元选择合成相结合的另一种混合方法。在传统的基于HMM的语音合成中,生成的语音参数往往会过分平滑,并且会在合成语音中引起模糊的声音。为了减轻这个问题,已经提出了几种混合方法。尽管它们通过直接使用自然波形段显着提高了合成语音的质量,但它们通常在转换合成语音特征时失去了灵活性。在所提出的方法中,代表单个声学参数段的丰富上下文模型被重构为GMM,并使用基于最大似然准则的参数生成算法从中生成语音参数序列。由于所提出方法的基本框架仍与传统框架相同,因此可以灵活地对声学特征进行建模。我们从各种角度对提出的方法进行了几次实验评估。实验结果表明,所提方法在合成语音质量上有明显的提高。

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