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Statistical modification based post-filtering technique for HMM-based speech synthesis

机译:基于统计修改的基于后置滤波的基于HMM的语音合成技术

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The speech generated from hidden Markov model (HMM)-based speech synthesis systems (HTS) is suffered from over-smoothing problem which is due to statistical modeling. This paper will focus on post-filtering technique based on statistical modification for the generated speech parameters. The marginal statistics of parameters' trajectory, such as mean, variance, skewness and kurtosis are adjusted according to the values generated from the HTS system. This technique is compared with global variance (GV)-based speech generation algorithm. The listening test showed that the post-filtering technique considering the mean and variance could generate almost equal result with GV model. When further considering the modification of skewness and kurtosis, the quality of generated speech has been improved.
机译:从基于隐马尔可夫模型(HMM)的语音合成系统(HTS)生成的语音由于统计建模而遭受过度平滑的问题。本文将重点研究基于统计修改的语音参数的后置滤波技术。根据HTS系统生成的值调整参数轨迹的边际统计数据,例如均值,方差,偏度和峰度。将该技术与基于全局方差(GV)的语音生成算法进行了比较。听力测试表明,考虑均值和方差的后滤波技术可以与GV模型产生几乎相等的结果。当进一步考虑偏度和峰度的修改时,已生成语音的质量已得到提高。

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