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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part A, Systems and humans >Adaptation of hidden Markov models using maximum model distance algorithm
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Adaptation of hidden Markov models using maximum model distance algorithm

机译:使用最大模型距离算法对隐马尔可夫模型进行自适应

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This paper presents a new approach that uses the maximum model distance (MMD) method for the adaptation of hidden Markov models (HMMs). This method has the same framework as it is used for constructing speech recognizers with abundant data, and work effectively with any amount of adaptation data. All parameters of the HMMs with or without the adaptation data could be adapted. If the adaptation data is sufficient, then the adapted models will gradually become a speaker-dependent one. Both the dialect and the speaker adaptation experiments were conducted to investigate the effectiveness of the proposed algorithm. In the speaker adaptation experiments, up to 65.55% phoneme error reduction was achieved, and the MMD could reduce the phoneme error by 16.91% even only one adaptation utterance is available.
机译:本文提出了一种使用最大模型距离(MMD)方法进行隐马尔可夫模型(HMM)自适应的新方法。此方法具有与用于构造具有大量数据的语音识别器的框架相同的框架,并且可以有效处理任何数量的自适应数据。具有或不具有适配数据的HMM的所有参数都可以适配。如果适应数据足够,则适应的模型将逐渐成为依赖于说话者的模型。进行方言和说话人适应性实验,以研究该算法的有效性。在说话人适应性实验中,最多可减少65.55%的音素错误,即使只有一种适应性发音,MMD仍可将音素错误减少16.91%。

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