改进的贝叶斯框架倒谱均值和方差归一化

N. Prasad, S. Umesh
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引用次数: 51

摘要

倒谱均值方差归一化(CMVN)是一种计算效率高的噪声鲁棒语音识别归一化技术。众所周知,CMVN的性能对于短话语会下降,这是由于用于参数估计的数据不足,以及由于所有话语都被迫具有零均值和单位方差而导致的可判别信息的丢失。在这项工作中,我们建议在CMVN中使用均值和方差的后验估计,而不是最大似然估计。这种贝叶斯方法除了提供参数的鲁棒估计外,还显示出在不增加计算成本的情况下保留可区分信息,使其特别适用于基于交互式语音应答(IVR)的应用程序。在Aurora2数据库中,该方法对所有话语的相对加权加权降低率分别为(i) 40.1%、27%和4.3%;在Aurora2数据库中,对短话语的相对加权加权降低率分别为(ii) 25.7%、38.6%和30.4%;在Aurora4数据库中,相对加权加权降低率分别为18.7%、12.6%和2.5%。
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Improved cepstral mean and variance normalization using Bayesian framework
Cepstral Mean and Variance Normalization (CMVN) is a computationally efficient normalization technique for noise robust speech recognition. The performance of CMVN is known to degrade for short utterances, due to insufficient data for parameter estimation and loss of discriminable information as all utterances are forced to have zero mean and unit variance. In this work, we propose to use posterior estimates of mean and variance in CMVN, instead of the maximum likelihood estimates. This Bayesian approach, in addition to providing a robust estimate of parameters, is also shown to preserve discriminable information without increase in computational cost, making it particularly relevant for Interactive Voice Response (IVR)-based applications. The relative WER reduction of this approach w.r.t. Cepstral Mean Normalization, CMVN and Histogram Equalization are (i) 40.1%, 27% and 4.3% with the Aurora2 database for all utterances, (ii) 25.7%, 38.6% and 30.4% with the Aurora2 database for short utterances, and (iii) 18.7%, 12.6% and 2.5% with the Aurora4 database.
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