Subword units are commonly used for end-to-end automatic speech recognition (ASR), while a fully acoustic-oriented subword modeling approach is somewhat missing. We propose an acoustic data-driven subword modeling (ADSM) approach that adapts the advantages of several text-based and acoustic-based subword methods into one pipeline. With a fully acoustic-oriented label design and learning process, ADSM produces acoustic-structured subword units and acoustic-matched target sequence for further ASR training. The obtained ADSM labels are evaluated with different end-to-end ASR approaches including CTC, RNN-Transducer and attention models. Experiments on the LibriSpeech corpus show that ADSM clearly outperforms both byte pair encoding (BPE) and pronunciation-assisted subword modeling (PASM) in all cases. Detailed analysis shows that ADSM achieves acoustically more logical word segmentation and more balanced sequence length, and thus, is suitable for both time-synchronous and label-synchronous models. We also briefly describe how to apply acoustic-based subword regularization and unseen text segmentation using ADSM.
翻译:字幕单位通常用于终端到终端自动语音识别(ASR),而完全注重声学的小字建模方法则有些缺失。我们建议采用声学数据驱动子字建模(ADSM)方法,将若干基于文本和声学的小字方法的优点调整成一个管道。通过完全注重声学的标签设计和学习过程,ADSM制作了声学结构的小字组和声学匹配的目标序列,以进一步进行ASR培训。获得的ADSM标签用不同的终端到终端的ASR方法进行评估,包括CTC、RNN-传输器和关注模型。对LibriSpeech Camp的实验显示,ADSM显然超越了多个字组编码(BPE)和读音辅助小词建模(PASM)的优点。详细分析显示,ADSM在声学上达到更符合逻辑的字分解和更平衡的顺序长度,因此适合于时间同步和标签同步的模式。我们还简要地描述了如何应用基于声学的小字正规化和采用ADSM。