A context-dependent approach for speaker verification using sequential decision

H. Noda, Katsuya Harada, E. Kawaguchi, H. Sawai
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引用次数: 1

Abstract

This paper is concerned about speaker veri ca tion SV using the sequential probability ratio test SPRT In the SPRT input samples are usually as sumed to be i i d samples from a probability density function because an on line probability computation is required Feature vectors used in speech processing obviously do not satisfy the assumption and there fore the correlation between successive feature vectors has not been considered in conventional SV using the SPRT The correlation can be modeled by the hidden Markov model HMM but unfortunately the HMM can not be directly applied to the SPRT because of statistical dependence of input samples This paper proposes a method of HMM probability computation using the mean eld approximation to resolve this problem where the probability of whole input samples is nominally represented as the product of probability of each sample as if input samples were independent each other
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基于上下文的顺序决策说话人验证方法
本文关注演讲者真实ca为SV使用序贯概率比检验SPRT SPRT输入样本通常是外界以为我d样本概率密度函数,因为需要一个联机概率计算特征向量用于语音处理显然不满足假设,因此连续特征向量之间的相关性并没有被认为是在传统SV使用SPRT相关性可以被建模隐马尔可夫模型HMM,但不幸的是,由于输入样本的统计依赖性,隐马尔可夫模型不能直接应用于SPRT。本文提出了一种利用平均场近似计算HMM概率的方法来解决这一问题,该方法将整个输入样本的概率名义上表示为每个样本的概率的乘积,就好像输入样本是相互独立的一样
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