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A new approach for robust speech recognition using minimum variance distortionless response

机译:使用最小方差无失真响应的鲁棒语音识别新方法

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In this paper, we proposed a new technique presents an extraction method for robust speech recognition using the MVDR (Minimum Variance Distortionless Response) spectrum of short time autocorrelation sequence which can reduce the effects of leftover of the nonstationary additive noise that remains after filtering the autocorrelation. To produce a further robust front-end, we present the customized robust distortionless constraint of the MVDR spectral estimation method through revised weighting of the subband power spectrum values based on the sub-band signal to noise ratios (SNRs), which adjust it to the new proposed technique. The new proposed functions allow the components of the input signal at the frequencies with minimum affected by noise to pass with better weights and attenuate more effectively the noisy and unwanted components. This revision results in decrease of the noise residuals of the projected spectrum from the filtered autocorrelation sequence, thus advancing to a more robust algorithm. Our proposed technique, when analyzed on Aurora 2 task for recognition applications, best performed all MFCC (Mel frequency cepstral coefficients) as the fundamental, respective autocorrelation sequence MFCC (RAS MFCC), and the proposed MVDR related features in numerous different noisy conditions.
机译:在本文中,我们提出了一种新技术,该技术提出了一种使用短时间自相关序列的MVDR(最小方差无失真响应)频谱进行鲁棒语音识别的提取方法,该方法可以减少过滤自相关后残留的非平稳加性噪声的残留影响。 。为了产生进一步的鲁棒前端,我们通过基于子带信噪比(SNR)对子带功率谱值进行修正的加权,提出了MVDR频谱估计方法的定制鲁棒无失真约束,并将其调整为新提出的技术。提出的新功能使输入信号的分量在受噪声影响最小的频率上以更好的权重通过,并更有效地衰减了有噪声和不必要的分量。该修订导致减少了来自滤波后的自相关序列的投影频谱的噪声残留,从而发展了一种更强大的算法。我们的拟议技术在用于识别应用的Aurora 2任务上进行分析时,在所有不同的嘈杂条件下,将所有MFCC(Mel频率倒谱系数)作为基本,各自的自相关序列MFCC(RAS MFCC)以及拟议的MVDR相关功能,都表现最佳。

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