稳健语音识别的伽玛酮小波倒谱系数

A. Adiga, Mathew Magimai, C. Seelamantula
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引用次数: 36

摘要

我们开发噪声鲁棒性特征使用伽玛通小波衍生自流行的伽玛通函数。这些小波结合了人类外周听觉系统的特征,特别是基底膜的空间变化频率响应。我们将这些新特征称为伽马单小波倒谱系数(GWCC)。从语音信号中提取GWCC的过程与传统的mel -频率倒谱系数(MFCC)技术类似,不同之处在于所使用的滤波器组的类型。我们用Gammatone小波构造的Gammatone小波滤波器组取代了MFCC中传统的mel滤波器组。我们还探讨了基于Gammatone滤波器组的特征(Gammatone倒谱系数(GCC))对鲁棒语音识别的影响。在AURORA 2数据库上,对gwcc、gcc和mfccc进行了比较,结果表明基于Gammatone的特征在低信噪比下具有更好的识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gammatone wavelet Cepstral Coefficients for robust speech recognition
We develop noise robust features using Gammatone wavelets derived from the popular Gammatone functions. These wavelets incorporate the characteristics of human peripheral auditory systems, in particular the spatially-varying frequency response of the basilar membrane. We refer to the new features as Gammatone Wavelet Cepstral Coefficients (GWCC). The procedure involved in extracting GWCC from a speech signal is similar to that of the conventional Mel-Frequency Cepstral Coefficients (MFCC) technique, with the difference being in the type of filterbank used. We replace the conventional mel filterbank in MFCC with a Gammatone wavelet filterbank, which we construct using Gammatone wavelets. We also explore the effect of Gammatone filterbank based features (Gammatone Cepstral Coefficients (GCC)) for robust speech recognition. On AURORA 2 database, a comparison of GWCCs and GCCs with MFCCs shows that Gammatone based features yield a better recognition performance at low SNRs.
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