一种改进基频(基音)检测算法的合成语音质量测量

Surinder Kumar, P. Tiwari, P. Agarwal, Upendra Kumar Acharya
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摘要

基频(基音)是决定语音质量的关键。本文提出了一种基于改进的圆形平均幅度差函数(CAMDF)的语音信号基音估计算法。将该算法与基于自相关函数(ACF)、平均幅度差函数(AMDF)和基于CAMDF的基音检测方法进行了性能比较,并将其纳入语音信号的分析合成系统。与AMDF、ACF和CAMDF方法相比,该方法的总误差分别为5.33%、4.7%和0.83%。此外,该算法在主观和客观测试方面的合成语音质量优于其他算法。
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Synthesized speech quality measurement of an Improved Fundamental Frequency (Pitch) Detection Algorithm
The fundamental frequency (pitch) is essential in determining speech quality. This paper proposes a modified circular average magnitude difference function (CAMDF) based algorithm for estimating the pitch of the speech signal. The performance of the proposed algorithm has been compared with autocorrelation function (ACF), average magnitude difference function (AMDF), and CAMDF based pitch detection methods by incorporating them into an analysis-synthesis system for speech signal. The proposed method has a lower gross error of 5.33%, 4.7%, and 0.83 % compared to AMDF, ACF, and CAMDF methods. Also, the synthesized speech quality of the proposed algorithm in respect of subjective and objective tests is superior with respect to other algorithms.
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