Multiple time resolutions for derivatives of Mel-frequency cepstral coefficients

G. Stemmer, C. Hacker, E. Noth, H. Niemann
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引用次数: 10

Abstract

Most speech recognition systems are based on Mel-frequency cepstral coefficients and their first- and second-order derivatives. The derivatives are normally approximated by fitting a linear regression line to a fixed-length segment of consecutive frames. The time resolution and smoothness of the estimated derivative depends on the length of the segment. We present an approach to improve the representation of speech dynamics, which is based on the combination of multiple time resolutions. The resulting feature vector is transformed to reduce its dimension and the correlation between the features. Another possibility, which has also been evaluated, is to use probabilistic PCA (PPCA) for the output distributions of the HMMs. Different configurations of multiple time resolutions are evaluated as well. When compared to the baseline system, a significant reduction of the word error rate can been achieved.
mel频率倒谱系数导数的多时间分辨率
大多数语音识别系统都是基于mel频率倒谱系数及其一阶和二阶导数。导数通常通过将线性回归线拟合到连续帧的固定长度段来近似。估计导数的时间分辨率和平滑度取决于段的长度。提出了一种基于多时间分辨率组合的改进语音动态表示的方法。对得到的特征向量进行变换,以降低其维数和特征之间的相关性。另一种可能性,也已被评估,是使用概率PCA (PPCA)对hmm的输出分布。对多时间分辨率的不同配置也进行了评估。与基线系统相比,可以显著降低单词错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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