For Mandarin end-to-end (E2E) automatic speech recognition (ASR) tasks, compared to character-based modeling units, pronunciation-based modeling units could improve the sharing of modeling units in model training but meet homophone problems. In this study, we propose to use a novel pronunciation-aware unique character encoding for building E2E RNN-T-based Mandarin ASR systems. The proposed encoding is a combination of pronunciation-base syllable and character index (CI). By introducing the CI, the RNN-T model can overcome the homophone problem while utilizing the pronunciation information for extracting modeling units. With the proposed encoding, the model outputs can be converted into the final recognition result through a one-to-one mapping. We conducted experiments on Aishell and MagicData datasets, and the experimental results showed the effectiveness of the proposed method.
翻译:与基于性格的建模单位相比,以发音为基础的建模单位可以改进模型单位在模型培训中的共享,但能解决同声器问题。在这项研究中,我们提议在建造E2E RNN-T基于曼达林的ASR系统时使用新颖的发音-读音独特字符编码。提议的编码是发音-基准可调和字符索引(CI)的结合。通过引入CI,RNN-T模型可以克服同声器问题,同时利用发音信息提取模型。拟议的编码,模型产出可以通过一对一的绘图转换成最后的识别结果。我们进行了Aishell和MagiData数据集的实验,实验结果显示了拟议方法的有效性。