Improving sentence-level alignment of speech with imperfect transcripts using utterance concatenation and VAD

Alexandru Moldovan, Adriana Stan, M. Giurgiu
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引用次数: 2

Abstract

Preparing data for speech processing applications is in general a task which requires expert knowledge and takes up a large amount of time. Therefore, being able to automate as much as possible this process can have a significant impact on the expansion of the number of languages for which spoken interaction with the machines is available. In this paper we build upon a previously developed tool, ALISA, which was developed to align speech with imperfect transcripts using only 10 minutes of manually labelled data, in any alphabetic language. Although its error rate is around 0.6% at word-level, we noticed that the sentence-level accuracy is drastically affected by a large number of sentence-initial word deletions. To overcome this problem, we propose two methods: one based on utterance concatenation, and one based on voice activity detection (VAD). The results show that these simple methods can achieve around 10% relative improvement over the baseline results.
使用话语拼接和VAD改善不完整转录文本的句子级对齐
为语音处理应用程序准备数据通常是一项需要专业知识和大量时间的任务。因此,能够尽可能地自动化此过程可以对扩展与机器进行口头交互的语言数量产生重大影响。在本文中,我们建立在先前开发的工具ALISA的基础上,该工具可以在任何字母语言中使用仅10分钟的手动标记数据将语音与不完美的转录本对齐。虽然它在词级的错误率在0.6%左右,但我们注意到句子级的准确性受到大量句子开头词删除的严重影响。为了克服这个问题,我们提出了两种方法:一种是基于话语串联的方法,另一种是基于语音活动检测(VAD)的方法。结果表明,这些简单的方法可以在基线结果的基础上实现大约10%的相对改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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