Direct modulation on LPC coefficients with application to speech enhancement and improving the performance of speech recognition in noise

Cuntai Guan, Yongbin Chen, Boxiu Wu
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引用次数: 11

Abstract

A novel method of noise reduction of speech based on direct modulation of LPC (linear predictive coding) coefficients is proposed. This method introduces higher-order derivatives of LPC coefficients with respect to the noise-to-signal energy ratio (NSR). With these derivatives, the noisy LPC coefficients are refined flexibly and efficiently to reduce noise contaminations. This method only needs the environmental NSR, and does not require knowledge of the probability distribution of the noise. This enhancement method is incorporated in an HMM (hidden Markov model)-based speech recognition system using LPC-derived cepstral features. A pronounced recognition error rate reduction is obtained after the speech enhancement.<>
LPC系数的直接调制及其在语音增强中的应用,提高了噪声环境下语音识别的性能
提出了一种基于线性预测编码(LPC)系数直接调制的语音降噪方法。该方法引入了LPC系数相对于噪声与信号能量比(NSR)的高阶导数。利用这些导数,可以灵活、有效地细化有噪声的LPC系数,从而降低噪声污染。该方法只需要环境的噪音感应比,而不需要知道噪声的概率分布。将该增强方法应用于基于隐马尔可夫模型的语音识别系统中,该系统使用lpc派生的倒谱特征。语音增强后,识别错误率明显降低。
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