一种新的呼吸特征在语音分析和分类中的应用

S. Deb, S. Dandapat
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引用次数: 21

摘要

本研究探讨了压力下呼吸成分对言语的影响。语音信号中的呼吸分量可以通过周期摄动商(PPQ)、幅度摄动商(APQ)、谐波噪声比(HNR)、声门噪声激励比(GNER)、谐波能量(HE)、残差谐波能量(HER)和谐波信号比(HSR)等不同特征来估计。对这些特征的统计分析表明,它们在压力下具有不同的均值和方差值。利用隐马尔可夫模型(HMM)评价呼吸特征在压力语音分类中的表现。结果表明,呼吸特征能很好地表征压力下的语音。并与MFCC特性进行了性能比较。最后,提出了一种结合呼吸特征和MFCC特征的压力下语音分类方法。在分类率方面,所提出的组合特征优于MFCC特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel breathiness feature for analysis and classification of speech under stress
This work explores the effect of breathiness component on speech under stress. The breathiness component in a speech signal can be estimated using different features such as period perturbation quotient (PPQ), amplitude perturbation quotient (APQ), harmonic to noise ratio (HNR), glottal to noise excitation ratio (GNER), harmonic energy (HE), harmonic energy of residue (HER) and harmonic to signal ratio (HSR). Statistical analysis of these features shows that they have different mean and variance values for speech under stress. The performance of breathiness features is evaluated using Hidden Markov Model (HMM) for classification of speech under stress. The results show that the breathiness features successfully characterize the speech under stress. The performance of breathiness features is compared with the MFCC feature. Finally, a speech under stress classification method is proposed with the combination of breathiness and MFCC features. In terms of classification rates, the proposed combined feature outperforms the MFCC feature.
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