A General Procedure for Improving Language Models in Low-Resource Speech Recognition

Qian Liu, Weiqiang Zhang, Jia Liu, Yao Liu
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Abstract

It is difficult for a language model (LM) to perform well with limited in-domain transcripts in low-resource speech recognition. In this paper, we mainly summarize and extend some effective methods to make the most of the out-of-domain data to improve LMs. These methods include data selection, vocabulary expansion, lexicon augmentation, multi-model fusion and so on. The methods are integrated into a systematic procedure, which proves to be effective for improving both n-gram and neural network LMs. Additionally, pre-trained word vectors using out-of-domain data are utilized to improve the performance of RNN/LSTM LMs for rescoring first-pass decoding results. Experiments on five Asian languages from Babel Build Packs show that, after improving LMs, 5.4-7.6% relative reduction of word error rate (WER) is generally achieved compared to the baseline ASR systems. For some languages, we achieve lower WER than newly published results on the same data sets.
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在低资源语音识别中改进语言模型的一般程序
在低资源语音识别中,语言模型(LM)很难在有限的域内文本中表现良好。本文主要总结和扩展了一些有效的方法来充分利用域外数据来改进LMs。这些方法包括数据选择、词汇扩充、词汇扩充、多模型融合等。将这些方法集成到一个系统的过程中,证明了对n-gram和神经网络lm的改进是有效的。此外,利用域外数据的预训练词向量来提高RNN/LSTM LMs的性能,用于重新记录第一遍解码结果。对来自Babel Build Packs的五种亚洲语言的实验表明,在改进LMs后,与基线ASR系统相比,单词错误率(WER)总体上降低了5.4-7.6%。对于某些语言,我们在相同的数据集上获得了比新发布的结果更低的WER。
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