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Context-dependent Duration Modeling with Backoff Strategy and Look-up Tables for Pronunciation Assessment and Mispronunciation Detection

机译:具有退避策略和查询表的上下文相关持续时间建模,用于语音评估和误音检测

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This paper makes an intensive study on the contextual modeling methods of duration information, for the purpose of improving the performance of pronunciation assessment and mispronunciation detection. The main ideas include: 1) we extend the relations among duration sequence with different level of contextual constraints, and bring them into a unified framework. 2) A backoff mechanism is introduced to resolve the problem of data sparseness and unbalanced distribution. 3) Rather than the traditional parametric functions, we use the discrete modeling for empirical duration distributions based on look-up tables, which can improve the model precision and accelerate the computation speed. The experimental results show the effectiveness of the above methods. The proposed word-dependent duration models can yield 0.0782 in absolute CC (correlation coefficient) improvement and 4.58% in absolute EER (equal error rate) reduction for the tasks of pronunciation assessment and mispronunciation detection respectively, both compared with the baseline method with conventional context-independent case.
机译:本文针对持续时间信息的上下文建模方法进行了深入研究,以期提高语音评估和发音错误检测的性能。主要思想包括:1)我们扩展了具有不同级别的上下文约束的持续时间序列之间的关系,并将其纳入一个统一的框架中。 2)引入了退避机制,以解决数据稀疏和分布不均的问题。 3)代替传统的参数函数,我们使用基于查找表的经验持续时间分布的离散建模,可以提高模型的精度并加快计算速度。实验结果证明了上述方法的有效性。与常规方法的基线方法相比,所提出的与单词相关的持续时间模型可以分别为语音评估和发音错误的任务带来0.0782的绝对CC(相关系数)改善和4.58%的绝对EER(等错误率)减少。 -独立的情况。

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