基于RNN-T的哈萨克语语音识别端到端模型

O. Mamyrbayev, Dina Oralbekova, A. Kydyrbekova, Tolganay Turdalykyzy, A. Bekarystankyzy
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引用次数: 7

摘要

自动语音识别是机器学习中一个快速发展的领域。当今最流行的语音识别系统是端到端系统,特别是那些直接输出单词序列的模型,考虑到实时输入的声音,这是在线端到端模型。流语音识别允许将音频流转换为语音到文本的转换,并在音频被处理的同时实时得到流语音识别的结果。本文讨论并实现了一种流行的基于rnn的哈萨克语语音识别模型。本文还对基于CTC模型的哈萨克语语音识别相关工作进行了分析。研究结果表明,基于rnn的模型可以在没有额外组件(如语言模型)的情况下很好地工作,并在我们的数据集上显示出最佳结果。研究结果表明,该系统的识别率达到10.6%,是其他端到端系统中识别哈萨克语语音的最佳指标。
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End-to-End Model Based on RNN-T for Kazakh Speech Recognition
Automatic speech recognition is a rapidly developing area in machine learning. The most popular speech recognition systems today are end-to-end systems, especially those models that directly output a sequence of words taking into account the input sound in real time, which are online end-to-end models. Stream speech recognition allows to transfer the audio stream to speech-to-text conversion and get the results of stream speech recognition in real time as the audio is processed. This article discusses and implements a popular RNN-T-based model for recognizing Kazakh speech. The analysis of works related to recognition of Kazakh speech based on the CTC model is also given. The findings demonstrated that an RNN-T-based model can work well without additional components, like a language model and showed the best outcome on our dataset. As a result of the research, the system reached 10.6% CER, which is the best indicator among other end-to-end systems for recognizing Kazakh speech.
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