Speaker identification and verification of noisy speech using multitaper MFCC and Gaussian Mixture models

Dominic Mathew
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引用次数: 15

Abstract

The two major applications of speaker recognition applications are speaker verification and speaker identification. But in most of the cases the signal is corrupted with background interferences such as noise and echo. This paper proposes the method of speaker recognition and identification after the noise separation. Support Vector Machine(SVM) classification based signal separation is adopted here. MFCC and Multitaper MFCC are used for feature extraction. Despite having low bias, MFCC has large variance. One promising technique for reducing the variance is to replace Hamming windowed spectrum with a multi-taper spectrum estimate. Gaussian Mixture models along with Universal Background Model(UBM) is used for speaker verification and identification tasks.
使用多锥度MFCC和高斯混合模型的说话人识别和噪声语音验证
说话人识别的两大应用是说话人验证和说话人身份识别。但在大多数情况下,信号会受到背景干扰,如噪音和回声的干扰。本文提出了一种基于噪声分离的说话人识别方法。本文采用基于支持向量机(SVM)分类的信号分离方法。使用MFCC和多锥MFCC进行特征提取。MFCC虽然偏倚低,但方差较大。一种很有前途的减小方差的技术是用多锥谱估计代替汉明窗谱。使用高斯混合模型和通用背景模型(UBM)对说话人进行验证和识别。
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