A text-independent speaker recognition system based on Probabilistic Principle Component Analysis

Luan Xiao-chun, Yin Jun-xun, Hu Wei-ping
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引用次数: 7

Abstract

To alleviate the problem of severe degradation of speaker recognition performance because of the phoneme variability between training and testing speech data, in the text-independent speaker recognition system. The paper proposed a text-independent (TI) speaker identification method that suppresses the phonetic information by a subspace method, Probabilistic Principle Component Analysis (PPCA) is utilized to construct these subspaces. Firstly, the covariance matrix was obtained from the large training speech feature data, and then the projection matrix was obtained using the EM algorithm. In the proposed method, it is assumed that a subspace with large variance in the speech feature space is a “phoneme-dependent subspace” and a complementary subspace of it is a “phoneme-independent subspace”, the feature vectors of train/test speech data are projected to a phoneme-independent subspace and a new feature vectors are obtained. In GMM-based TI speaker identification experiments, the new feature vectors improves the identification rate by 16.25% and 2.99% respectively, compared with conventional MFCC, PCA-based MFCC. It shows that the new feature vectors of the proposed method can efficiently capture speaker-discriminative information, and suppress the other speech information.
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基于概率主成分分析的非文本说话人识别系统
为了缓解训练语音和测试语音之间的音素差异导致说话人识别性能严重下降的问题,提出了一种不依赖文本的说话人识别系统。本文提出了一种基于子空间的独立于文本的说话人识别方法,该方法利用概率主成分分析(PPCA)构造这些子空间来抑制语音信息。首先从大量训练语音特征数据中得到协方差矩阵,然后利用EM算法得到投影矩阵。该方法假设语音特征空间中方差较大的子空间为“音素依赖子空间”,其互补子空间为“音素独立子空间”,将训练/测试语音数据的特征向量投影到音素独立子空间中,得到新的特征向量。在基于gmm的TI说话人识别实验中,与传统的MFCC、基于pca的MFCC相比,新特征向量的识别率分别提高了16.25%和2.99%。结果表明,该方法的新特征向量能够有效地捕获说话人识别信息,并抑制其他语音信息。
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