基于序列的损失函数改进基于注意力的端到端ASR系统

Jia Cui, Chao Weng, Guangsen Wang, J. Wang, Peidong Wang, Chengzhu Yu, Dan Su, Dong Yu
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引用次数: 10

摘要

声学模型和语言模型是传统语音识别系统的两个主要组成部分。它们通常是独立训练的,但最近出现了在统一的端到端(E2E)框架中同时优化这两个组件的趋势。然而,端到端加密系统与传统混合系统之间的性能差距表明,一些知识尚未在新框架中得到充分利用。一个观察结果是,当前基于注意力的E2E系统在使用相同资源独立训练的LMs解码时可以产生更好的识别结果。在本文中,我们关注如何在不增加模型复杂性或诉诸额外数据的情况下改进基于注意力的端到端加密系统。提出了一种新的具有连接时间分类损失的多任务训练策略。研究了基于序列的最小贝叶斯风险(MBR)损失。我们在SWB 300hrs上的实验表明,这两种损失函数都能显著提高基线模型的性能。联合lm解码的额外增益对于CTC训练模型保持不变,但对于MBR训练模型仅是边际增益。这意味着虽然CTC损失函数能够捕获更多的声学知识,但MBR损失函数利用了更多的单词/字符依赖性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Attention-Based End-to-End ASR Systems with Sequence-Based Loss Functions
Acoustic model and language model (LM) have been two major components in conventional speech recognition systems. They are normally trained independently, but recently there has been a trend to optimize both components simultaneously in a unified end-to-end (E2E) framework. However, the performance gap between the E2E systems and the traditional hybrid systems suggests that some knowledge has not yet been fully utilized in the new framework. An observation is that the current attention-based E2E systems could produce better recognition results when decoded with LMs which are independently trained with the same resource.In this paper, we focus on how to improve attention-based E2E systems without increasing model complexity or resorting to extra data. A novel training strategy is proposed for multi-task training with the connectionist temporal classification (CTC) loss. The sequence-based minimum Bayes risk (MBR) loss is also investigated. Our experiments on SWB 300hrs showed that both loss functions could significantly improve the baseline model performance. The additional gain from joint-LM decoding remains the same for CTC trained model but is only marginal for MBR trained model. This implies that while CTC loss function is able to capture more acoustic knowledge, MBR loss function exploits more word/character dependency.
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