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Model Adaptation for HMM-Based Speech Synthesis under Minimum Generation Error Criterion

机译:最小生成误差准则下基于HMM的语音合成模型自适应

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摘要

In order to solve the issues related to the maximum likelihood (ML) based HMM training for HMM-based speech synthesis, a minimum generation error (MGE) criterion had been proposed. This paper continues to apply the MGE criterion to model adaptation for HMM-based speech synthesis. We introduce a MGE linear regression (MGELR) based model adaptation algorithm, where the transforms from source HMMs to target HMMs are optimized to minimize the generation errors for the adaptation data of the target speaker. The regression matrices for both mean vector and covariance matrix of Gaussian distribution are re-estimated. The proposed MGELR approach was compared with the maximum likelihood linear regression (MLLR) based model adaptation. Experimental results indicate that the generation errors were reduced after the MGELR-based model adaptation. And from the subjective listening test, the speaker similarity and the quality of the synthesized speech using MGELR were better than the results using MLLR.
机译:为了解决与基于HMM的语音合成相关的基于最大可能性(ML)的HMM培训的问题,已经提出了最小的产生误差(MGE)标准。本文继续将MGE标准应用于基于HMM的语音合成的模型适应性。我们介绍了一种基于MGE线性回归(MGELR)的模型适配算法,其中从源HMMS到目标HMMS的变换被优化,以最小化目标扬声器的适配数据的生成误差。重新估计高斯分布的平均载体和协方差矩阵的回归矩阵。将所提出的MGELR方法与基于最大似然线性回归(MLLR)的模型适配进行了比较。实验结果表明,基于MGelr的模型适应后,产生误差降低。并且从主观听力测试,使用MGelr的扬声器相似性和合成语音的质量优于使用MLLR的结果。

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