Incorporating Written Domain Numeric Grammars into End-To-End Contextual Speech Recognition Systems for Improved Recognition of Numeric Sequences

Ben Haynor, Petar S. Aleksic
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引用次数: 3

Abstract

Accurate recognition of numeric sequences is crucial for many contextual speech recognition applications. For example, a user might create a calendar event and be prompted by a virtual assistant for the time, date, and duration of the event. We propose a modular and scalable solution for improved recognition of numeric sequences. We use finite state transducers built from written domain numeric grammars to increase the likelihood of hypotheses containing matching numeric entities during beam search in an end-to-end speech recognition system. Using our technique results in relative reduction in word error rate of up to 59% on a variety of numeric sequence recognition tasks (times, percentages, digit sequences, …).
将书面领域数字语法整合到端到端上下文语音识别系统中以改进数字序列的识别
准确识别数字序列是许多上下文语音识别应用的关键。例如,用户可以创建一个日历事件,然后由虚拟助手提示该事件的时间、日期和持续时间。我们提出了一个模块化和可扩展的解决方案来改进数字序列的识别。在端到端语音识别系统的波束搜索过程中,我们使用由书面领域数字语法构建的有限状态换能器来增加包含匹配数字实体的假设的可能性。使用我们的技术,在各种数字序列识别任务(时间、百分比、数字序列等)上,单词错误率相对降低了59%。
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