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Exploiting principal component analysis in modulation spectrum enhancement for robust speech recognition

机译:用于鲁棒语音识别的调制频谱增强中的主要成分分析

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In this paper, we present a novel method to improve the noise robustness of speech features based on principal component analysis (PCA). The PCA process is employed to extract a set of basis spectral vectors for the modulation spectra of clean training speech features. The new modulation spectra of the speech features, constructed by mapping the original modulation spectra into the space spanned by these PCA-derived basis vectors, have shown robustness against the noise distortion. The experiments conducted on the Aurora-2 digit string database revealed that the proposed PCA-based approach, together with mean and variance normalization (MVN), can provide average error reduction rates of over 65% and 12% relative as compared with the baseline MFCC system and that using the MVN method alone, respectively.
机译:在本文中,我们提出了一种新的方法,提高了基于主成分分析(PCA)的语音特征噪声稳健性。使用PCA过程来提取用于清洁训练语音特征的调制光谱的一组基光谱向量。通过将原始调制光谱映射到由这些PCA推导的基础向量跨越的空间构成的语音特征的新调制光谱已经示出了对噪声失真的鲁棒性。在Aurora-2位数串数据库上进行的实验显示,与基线MFCC相比,所提出的基于PCA的方法与平均和方差标准化(MVN)相比,可以提供超过65%和12%的平均误差降低率超过65%和12%系统和使用MVN方法的系统分别。

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