A segmentally informed solution to automatic accent classification and its advantages to forensic applications

IF 0.5 4区 社会学 Q4 CRIMINOLOGY & PENOLOGY International Journal of Speech Language and the Law Pub Date : 2022-07-08 DOI:10.1558/ijsll.20446
Georgina Brown, J. Franco-Pedroso, J. González-Rodríguez
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引用次数: 1

Abstract

Traditionally, work in automatic accent recognition has followed a similar research trajectory to that of language identification, dialect identification and automatic speaker recognition. The same acoustic modelling approaches that have been implemented in speaker recognition (such as GMM-UBM and i-vector-based systems) have also been applied to automatic accent recognition. These approaches form models of speakers’ accents by taking acoustic features from right across the speech signal without knowledge of its phonetic content. Particularly for accent recognition, however, phonetic information is expected to add substantial value to the task. The current work presents an alternative modelling approach to automatic accent recognition, which forms models of speakers’ pronunciation systems using segmental information. This article claims that such an approach to the problem makes for a more explainable method and therefore is a more appropriate method to deploy in settings where it is important to be able to communicate methods, such as forensic applications. We discuss the issue of explainability and show how the system operates on a large 700-speaker dataset of non-native English conversational telephone recordings.
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一种分段信息的自动口音分类方法及其在法医应用中的优势
传统上,语音自动识别的研究轨迹与语言识别、方言识别和说话人自动识别的研究轨迹相似。在说话人识别中实现的声学建模方法(如GMM-UBM和基于i向量的系统)也已应用于自动口音识别。这些方法通过在不了解语音内容的情况下从语音信号中提取声学特征来形成说话人口音的模型。然而,特别是对于口音识别,语音信息有望为任务增加实质性的价值。目前的工作提出了一种自动口音识别的替代建模方法,该方法使用分段信息形成说话者发音系统的模型。本文声称,这种解决问题的方法是一种更易于解释的方法,因此是一种更适合部署在需要能够通信方法的设置中(例如取证应用程序)的方法。我们讨论了可解释性问题,并展示了该系统如何在一个大型的700人非母语英语会话电话录音数据集上运行。
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来源期刊
CiteScore
1.00
自引率
25.00%
发文量
18
期刊介绍: The International Journal of Speech, Language and the Law is a peer-reviewed journal that publishes articles on any aspect of forensic language, speech and audio analysis. Founded in 1994 as Forensic Linguistics, the journal changed to its present title in 2003 to reflect a broadening of academic coverage and readership. Subscription to the journal is included in membership of the International Association of Forensic Linguists and the International Association for Forensic Phonetics and Acoustics.
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