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A method to integrate additional knowledge sources into HMM based on junction tree decomposition

机译:基于联结树分解的将其他知识源集成到HMM中的方法

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Most current automatic speech recognition (ASR) systems use statistical data-driven methods based on hidden Markov models (HMMs). Although such approaches have proved to be efficient choices, ASR systems often still perform much worse than human listeners, especially in the presence of unexpected acoustic variability. Only a limited level of success can be achieved, by relying only on statistical models and mostly ignoring the additional knowledge available. We propose a new method of integrating various kinds of additional knowledge sources into an HMM-based statistical acoustic model in this paper. We utilized the junction tree algorithm to achieve efficient integration due to increased model complexity. This is since it facilitates the decomposition of the joint probability density function (PDF) into a linked set of local conditional PDFs. This way, a simplified form of the model could be constructed and reliably estimated using limited training data. We evaluated how efficient the proposed method was on an LVCSR task using two different types of accented English speech data. The experimental results revealed that our method improved word accuracy with respect to the standard HMM.
机译:当前大多数自动语音识别(ASR)系统都使用基于隐马尔可夫模型(HMM)的统计数据驱动方法。尽管已证明这些方法是有效的选择,但ASR系统的性能通常仍比听众差很多,尤其是在存在意外的声音可变性的情况下。仅依靠统计模型而几乎忽略了可用的其他知识,只能取得有限的成功。本文提出了一种将各种附加知识源集成到基于HMM的统计声学模型中的新方法。由于增加了模型的复杂性,我们利用结点树算法实现了有效的集成。这是因为它有助于将联合概率密度函数(PDF)分解为一组链接的局部条件PDF。这样,可以使用有限的训练数据构建模型的简化形式并可靠地进行估计。我们使用两种不同类型的带重音的英语语音数据评估了该方法在LVCSR任务上的效率。实验结果表明,相对于标准HMM,我们的方法提高了单词的准确性。

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