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Autocorrelation-based noise subtraction method with smoothing, overestimation, energy, and cepstral mean and variance normalization for noisy speech recognition

机译:基于自相关的噪声减法,具有平滑,高估,能量,倒谱均值和方差归一化的功能,可用于嘈杂的语音识别

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Autocorrelation domain is a proper domain for clean speech signal and noise separation. In this paper, a method is proposed to decrease effects of noise on the clean speech signal, autocorrelation-based noise subtraction (ANS). Then to deal with the error introduced by assumption that noise and clean speech signal are uncorrelated, two methods are proposed. Also to improve recognition rate of speech recognition system, overestimation parameter is used. Finally, with the addition of energy and cepstral mean and variance normalization to features of speech, recognition rate has improved considerably in comparison to standard features and other correlation-based methods. The proposed methods are tested on the Aurora 2 database. Between different proposed methods, autocorrelation-based noise subtraction method with smoothing, overestimation, energy, and cepstral mean and variance normalization (ANSSOEMV) method has a best recognition rate improvement in average than MFCC features which is 64.91% on the Aurora 2 database.
机译:自相关域是用于干净语音信号和噪声分离的适当域。本文提出了一种基于自相关的噪声减法(ANS),以降低噪声对干净语音信号的影响。然后,针对噪声和干净语音信号不相关的假设所引起的误差,提出了两种方法。为了提高语音识别系统的识别率,还使用了高估参数。最后,通过对语音特征添加能量和倒谱均值以及方差归一化,与标准特征和其他基于相关性的方法相比,识别率有了显着提高。提议的方法在Aurora 2数据库上进行了测试。在不同的建议方法之间,基于自相关的噪声减法,平滑,过高估计,能量和倒谱均值和方差归一化(ANSSOEMV)方法的平均识别率比MFCC功能的平均识别率更高,在Aurora 2数据库上为64.91%。

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