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Nonnative Speech Recognition Based on Bilingual Model Modification at State Level

机译:基于双语模型修正的国家级非母语语音识别

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This paper presents a novel bilingual model modification approach to improve nonnative speech recognition accuracy when the variations of accented pronunciations occur. Each state of baseline nonnative acoustic model is modified with several candidate states from the auxiliary acoustic model, which is trained on speakers' mother language. State mapping criterion and n-best candidates are investigated, and different numbers of Gaussian mixtures of the auxiliary acoustic model are compared based on a grammar-constrained speech recognition system. Using this bilingual model modification approach, compared to the nonnative acoustic model which has already been well trained by adaptation technique MAP, the Phrase Error Rate further achieves a 5.83% relative reduction, while only a small relative increase on Real Time Factor occurs.
机译:本文提出了一种新颖的双语模型修改方法,以在重读发音发生变化时提高非母语语音识别的准确性。基准非本机声学模型的每个状态都用来自辅助声学模型的几种候选状态进行了修改,这些辅助状态以说话者的母语进行训练。研究了状态映射标准和n个最佳候选,并基于语法约束的语音识别系统比较了辅助声学模型的不同数量的高斯混合。与已经通过自适应技术MAP进行了良好训练的非本机声学模型相比,使用这种双语模型修改方法,词组错误率进一步实现了5.83%的相对降低,而实时因子仅发生了很小的相对增长。

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