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Cepstral behaviour due to additive noise and a compensation scheme for noisy speech recognition

机译:由于加性噪声引起的倒谱行为以及用于嘈杂语音识别的补偿方案

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摘要

The speech cepstral coefficients affected by additive noise are investigated. The cepstral vector changes as the level of additive noise increases. The behaviour of cepstral vector change shows that the cepstral vector shrinks in its norm and converges to the cepstral vector of the noise. This nonlinear behaviour of the cepstral vector can be approximated by a simple linear expression. Based on this representation, a model adaptation method is developed using deviation vectors. For every model state mean, a deviation vector is calculated according to the extracted noise spectrum and a pre-defined noise-to-signal ratio. During the pattern matching, an optimal scaling factor for the deviation vector is determined frame by frame, and the scaled deviation vector is added to the state mean of speech models so that the clean speech models are adapted to the noisy environment. Experimental results show that the proposed method is effective for white noise and coloured noise. It also outperforms the weighted projection measure method in experiments.
机译:研究了附加噪声对语音倒谱系数的影响。倒频谱矢量随附加噪声水平的增加而变化。倒频谱矢量变化的行为表明,倒频谱矢量在其范数上缩小并收敛到噪声的倒频谱矢量。倒频谱矢量的这种非线性行为可以通过简单的线性表达式来近似。基于该表示,使用偏差矢量开发了模型自适应方法。对于每个模型状态平均值,根据提取的噪声谱和预定义的噪声信号比来计算偏差向量。在模式匹配过程中,逐帧确定偏差向量的最佳缩放比例,并将缩放后的偏差向量添加到语音模型的状态平均值中,以使干净的语音模型适合嘈杂的环境。实验结果表明,该方法对白噪声和彩色噪声均有效。在实验中,它也优于加权投影测度方法。

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