Capturing Complementary Information via Reversed Filter Bank and Parallel Implementation with MFCC for Improved Text-Independent Speaker Identification

S. Chakroborty, A. Roy, Sourav Majumdar, G. Saha
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引用次数: 22

Abstract

A state of the art speaker identification (SI) system requires a robust feature extraction unit followed by a speaker modeling scheme for generalized representation of these features. Over the years, mel-frequency cepstral coefficients (MFCC) modeled on the human auditory system have been used as a standard acoustic feature set for SI applications. However, due to the structure of its filter bank, it captures vocal tract characteristics more effectively in the lower frequency regions. This work proposes a new set of features using a complementary filter bank structure which improves distinguishability of speaker specific cues present in the higher frequency zone. Unlike high level features that are difficult to extract, the proposed feature set involves little computational burden during the extraction process. When combined with MFCC via a parallel implementation of speaker models, the proposed feature improves performance baseline of MFCC based system. The proposition is validated by experiments conducted on two different kinds of databases namely YOHO (microphone speech) and POLYCOST (telephone speech) with two different classifier paradigms, namely Gaussian Mixture Models (GMM) and Polynomial Classifier (PC) and for various model orders
利用反向滤波器组捕获互补信息及MFCC并行实现改进的文本无关说话人识别
最先进的说话人识别(SI)系统需要一个鲁棒的特征提取单元,然后是一个说话人建模方案,用于这些特征的广义表示。多年来,以人类听觉系统为模型的mel-frequency倒谱系数(MFCC)已被用作SI应用的标准声学特征集。然而,由于其滤波器组的结构,它在低频区域更有效地捕获声道特征。这项工作提出了一组新的特征,使用一个互补的滤波器组结构,提高了存在于更高频率区域的说话者特定线索的可分辨性。与难以提取的高级特征不同,所提出的特征集在提取过程中涉及的计算负担很小。当通过扬声器模型的并行实现与MFCC相结合时,所提出的特性提高了基于MFCC系统的性能基准。在YOHO(麦克风语音)和POLYCOST(电话语音)两种不同的数据库上,采用高斯混合模型(GMM)和多项式分类器(PC)两种不同的分类器范式,针对不同的模型阶数,对该命题进行了实验验证
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