Improving Proper Noun Recognition in End-To-End Asr by Customization of the Mwer Loss Criterion

Cal Peyser, Tara N. Sainath, G. Pundak
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引用次数: 11

Abstract

Proper nouns present a challenge for end-to-end (E2E) automatic speech recognition (ASR) systems in that a particular name may appear only rarely during training, and may have a pronunciation similar to that of a more common word. Unlike conventional ASR models, E2E systems lack an explicit pronounciation model that can be specifically trained with proper noun pronounciations and a language model that can be trained on a large text-only corpus. Past work has addressed this issue by incorporating additional training data or additional models. In this paper, we instead build on recent advances in minimum word error rate (MWER) training to develop two new loss criteria that specifically emphasize proper noun recognition. Unlike past work on this problem, this method requires no new data during training or external models during inference. We see improvements ranging from 2% to 7% relative on several relevant benchmarks.
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自定义词频损耗准则改进端到端自动识别中的专有名词识别
专有名词对端到端(E2E)自动语音识别(ASR)系统提出了挑战,因为特定名称可能在训练期间很少出现,并且可能具有与更常见的单词相似的发音。与传统的ASR模型不同,E2E系统缺乏可以用专有名词发音进行专门训练的明确发音模型和可以在大型纯文本语料库上进行训练的语言模型。过去的工作通过合并额外的训练数据或额外的模型来解决这个问题。在本文中,我们在最小词错误率(MWER)训练的最新进展的基础上,开发了两个新的丢失标准,特别强调专有名词识别。与以往解决该问题的工作不同,该方法在训练过程中不需要新的数据,在推理过程中也不需要外部模型。在几个相关的基准测试中,我们看到了相对于2%到7%的改进。
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