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首页> 外文期刊>IEEE Transactions on Signal Processing >On the application of mixture AR hidden Markov models to text independent speaker recognition
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On the application of mixture AR hidden Markov models to text independent speaker recognition

机译:混合AR隐马尔可夫模型在文本独立说话人识别中的应用

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摘要

Linear predictive hidden Markov models have proved to be efficient for statistically modeling speech signals. The possible application of such models to statistical characterization of the speaker himself is described and evaluated. The results show that even with a short sequence of only four isolated digits, a speaker can be verified with an average equal-error rate of less than 3 %. These results are slightly better than the results obtained using speaker-dependent vector quantizers, with comparable numbers of spectral vectors. The small improvement over the vector quantization approach indicates the weakness of the Markovian transition probabilities for characterizing speaker-dependent transitional information.
机译:事实证明,线性预测隐马尔可夫模型可有效地对语音信号进行统计建模。描述并评估了此类模型在演讲者本人的统计表征中的可能应用。结果表明,即使只有四个孤立的数字的短序列,说话者也可以以小于3%的平均均等错误率得到验证。这些结果比使用与扬声器相关的矢量量化器获得的结果略好,并具有可比较数量的频谱矢量。矢量量化方法的微小改进表明,用于描述说话者相关过渡信息的马尔可夫过渡概率不足。

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