Combining Vocal Source and MFCC Features for Enhanced Speaker Recognition Performance Using GMMs

Danoush Hosseinzadeh, S. Krishnan
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引用次数: 62

Abstract

This work presents seven novel spectral features for speaker recognition. These features are the spectral centroid (SC), spectral bandwidth (SBW), spectral band energy (SBE), spectral crest factor (SCF), spectral flatness measure (SFM), Shannon entropy (SE) and Renyi entropy (RE). The proposed spectral features can quantify some of the characteristics of the vocal source or the excitation component of speech. This is useful for speaker recognition since vocal source information is known to be complementary to the vocal tract transfer function, which is usually obtained using the Mel frequency cepstral coefficients (MFCC) or linear predication cepstral coefficients (LPCC). To evaluate the performance of the spectral features, experiments were performed using a text-independent cohort Gaussian mixture model (GMM) speaker identification system. Based on 623 users from the TIMIT database, the spectral features achieved an identification accuracy of 99.33% when combined with the MFCC based features and when using undistorted speech. This represents a 4.03% improvement over the baseline system trained with only MFCC and DeltaMFCC features.
结合声源和MFCC功能,使用GMMs增强说话人识别性能
本文提出了七个新的光谱特征用于说话人识别。这些特征包括:谱质心(SC)、谱带宽(SBW)、谱带能量(SBE)、谱峰因子(SCF)、谱平坦度测度(SFM)、Shannon熵(SE)和Renyi熵(RE)。所提出的频谱特征可以量化声源的某些特征或语音的激励成分。这对于说话人识别是有用的,因为声源信息已知与声道传递函数是互补的,声道传递函数通常使用Mel频率倒谱系数(MFCC)或线性预测倒谱系数(LPCC)获得。为了评估光谱特征的性能,使用独立于文本的队列高斯混合模型(GMM)说话人识别系统进行了实验。基于TIMIT数据库的623个用户,结合基于MFCC的特征和使用未失真语音时,频谱特征的识别准确率达到99.33%。与仅使用MFCC和DeltaMFCC特征训练的基线系统相比,这代表了4.03%的改进。
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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