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Feature Extraction Based on Pitch-Synchronous Averaging for Robust Speech Recognition

机译:基于音高同步平均的特征提取用于鲁棒语音识别

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In this paper, we propose two estimators for the autocorrelation sequence of a periodic signal in additive noise. Both estimators are formulated employing tables which contain all the possible products of sample pairs in a speech signal frame. The first estimator is based on a pitch-synchronous averaging. This estimator is statistically analyzed and we show that the signal-to-noise ratio (SNR) can be increased up to a factor equal to the number of available periods. The second estimator is similar to the former one but it avoids the use of those sample products more likely affected by noise. We prove that, under certain conditions, this estimator can remove the effect of an additive noise in a statistical sense. Both estimators are employed to extract mel frequency cepstral coefficients (MFCCs) as features for robust speech recognition. Although these estimators are initially conceived for voiced speech frames, we extend their application to unvoiced sounds in order to obtain a coherent feature extractor. The experimental results show the superiority of the proposed approach over other MFCC-based front-ends such as the higher-lag autocorrelation spectrum estimation (HASE), which also employs the idea of avoiding those autocorrelation coefficients more likely affected by noise.
机译:在本文中,我们针对加性噪声中周期信号的自相关序列提出了两个估计器。两种估计量均采用表来制定,这些表包含语音信号帧中所有可能的样本对乘积。第一估计器基于音高同步平均。对该估计量进行了统计分析,结果表明,信噪比(SNR)可以提高到等于可用周期数的因子。第二种估计器与前一种类似,但是避免了使用那些更可能受到噪声影响的样本产品。我们证明,在某些条件下,该估计器可以从统计意义上消除加性噪声的影响。两种估计器均被用来提取梅尔频率倒谱系数(MFCC)作为强大语音识别的功能。尽管这些估计器最初是为有声语音帧构想的,但我们将其应用扩展到清音,以获得连贯的特征提取器。实验结果表明,该方法相对于其他基于MFCC的前端(如高延迟自相关频谱估计(HASE))具有优势,该方法还采用了避免那些自相关系数更容易受到噪声影响的思想。

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