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Speaker verification using mixture decomposition discrimination

机译:使用混合分解判别进行说话人验证

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摘要

A new approach for speaker verification is presented. Mixture decomposition discrimination (MDD) is based on the idea that, when modeling speech using speaker independent continuous density hidden Markov models (HMM), different speakers speaking the same word would cause different HMM mixture components to dominate. When the mixture information is considered, one can construct a “mixture profile” of a speaker speaking a given word or phrase. This mixture profile is incorporated into a discriminative training procedure to discriminate between a true speaker and all other speakers (or imposters). The effectiveness of MDD is seen when it is incorporated into a hybrid verification system that also includes speaker dependent HMM modeling with cohort normalization. Experimental results show that the hybrid system reduces the average equal error rate (EER) by 46% when compared with the EER of the speaker-dependent HMM verifier. It is also shown that the computational and model storage requirements needed to incorporate MDD into the hybrid system are relatively small
机译:提出了一种用于说话人验证的新方法。混合分解判别(MDD)基于以下思想:当使用说话者独立的连续密度隐藏马尔可夫模型(HMM)对语音建模时,讲相同单词的不同说话者会导致不同的HMM混合成分占主导地位。当考虑混合信息时,可以构建说出给定单词或短语的说话人的“混合概况”。此混合配置文件被纳入判别训练程序中,以区分真正的说话者和所有其他说话者(或冒名顶替者)。将MDD合并到混合验证系统中后,即可看到MDD的有效性,该系统还包括具有群组标准化的基于说话人的HMM建模。实验结果表明,与依赖于说话人的HMM验证器的EER相比,混合系统将平均平均错误率(EER)降低了46%。还表明,将MDD集成到混合系统中所需的计算和模型存储需求相对较小

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