SNR功能自动语音识别

Philip N. Garner
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引用次数: 6

摘要

当与倒谱归一化技术相结合时,通常用于自动语音识别的特征是基于信噪比(SNR)的。我们表明,从一开始就计算信噪比,而不是依靠倒谱归一化来产生信噪比,与基于功率谱的特征相比,它具有许多实用和数学上的优势。在详细的分析中,我们推导了基于信噪比特征的最大似然和最大后验估计,并表明它们可以优于更传统的估计,特别是当随后与倒谱方差归一化相结合时。我们进一步展示了轶事证据,基于信噪比的特征可以很好地用于基于低能量包络跟踪的噪声估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SNR features for automatic speech recognition
When combined with cepstral normalisation techniques, the features normally used in Automatic Speech Recognition are based on Signal to Noise Ratio (SNR). We show that calculating SNR from the outset, rather than relying on cepstral normalisation to produce it, gives features with a number of practical and mathematical advantages over power-spectral based ones. In a detailed analysis, we derive Maximum Likelihood and Maximum a-Posteriori estimates for SNR based features, and show that they can outperform more conventional ones, especially when subsequently combined with cepstral variance normalisation. We further show anecdotal evidence that SNR based features lend themselves well to noise estimates based on low-energy envelope tracking.
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