改进鲁棒语音识别的高阶倒谱矩归一化

C. Hsu, Lin-Shan Lee
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引用次数: 30

摘要

倒谱归一化作为一种产生鲁棒特征的有效方法被广泛应用于语音识别。这种方法的好例子包括倒谱均值减法,以及倒谱均值和方差归一化,其中mel频率倒谱系数(mfccc)的第一个或第一个和第二个矩都被归一化。在本文中,我们提出了高阶倒谱矩归一化族,其中MFCC参数相对于高于1或2阶的几个矩进行归一化。其基本思想是,高阶矩更多地由较大值的样本所主导,这很可能是参数分布不对称和异常平坦度或尾部尺寸的主要来源。因此,对这些矩的归一化更加强调这些信号分量,并约束分布更加对称,具有更合理的平坦度和尾部大小。基于MFCC参数分布的统计特性,分析和讨论了该方法的基本原理。基于AURORA 2、AURORA 3、AURORA 4和资源管理(Resource Management, RM)测试环境的实验结果表明,采用该方法,在所有类型的噪声和所有信噪比条件下,识别精度都能得到显著且持续的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Higher Order Cepstral Moment Normalization for Improved Robust Speech Recognition
Cepstral normalization has widely been used as a powerful approach to produce robust features for speech recognition. Good examples of this approach include cepstral mean subtraction, and cepstral mean and variance normalization, in which either the first or both the first and the second moments of the Mel-frequency cepstral coefficients (MFCCs) are normalized. In this paper, we propose the family of higher order cepstral moment normalization, in which the MFCC parameters are normalized with respect to a few moments of orders higher than 1 or 2. The basic idea is that the higher order moments are more dominated by samples with larger values, which are very likely the primary sources of the asymmetry and abnormal flatness or tail size of the parameter distributions. Normalization with respect to these moments therefore puts more emphasis on these signal components and constrains the distributions to be more symmetric with more reasonable flatness and tail size. The fundamental principles behind this approach are also analyzed and discussed based on the statistical properties of the distributions of the MFCC parameters. Experimental results based on the AURORA 2, AURORA 3, AURORA 4, and Resource Management (RM) testing environments show that with the proposed approach, recognition accuracy can be significantly and consistently improved for all types of noise and all SNR conditions.
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