首页> 外文会议>Annual conference of the International Speech Communication Association;INTERSPEECH 2011 >Multi-accent speech recognition of Afrikaans, Black and White varieties of South African English
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Multi-accent speech recognition of Afrikaans, Black and White varieties of South African English

机译:南非英语的南非语,南非语和南非语的多口音语音识别

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In this paper we investigate speech recognition performance of systems employing several accent-specific recognisers in parallel for the simultaneous recognition of multiple accents. We compare these systems with oracle systems, in which test utterances are presented to matching accent-specific recognisers, and with accent-independent systems, in which acoustic and language model training data are pooled. Our investigation is based on Afrikaans (AE), Black (BE) and White (EE) accents of South African English. We find that, when accent is classified on a per-utterance basis, parallel systems outperform oracle systems for the AE+EE accent pair while the opposite is observed for BE+EE. When accent identification is carried out on a per-speaker basis, oracle or better performance is obtained for both accent pairs. Furthermore, parallel systems based on multi-accent acoustic modelling, which allows selective cross-accent sharing of acoustic training data, outperform parallel systems using accent-specific acoustic models. The former also yields better performance than accent-independent recognition, which uses pooled acoustic and language models.
机译:在本文中,我们研究了并行使用多个重音特定识别器同时识别多个重音的系统的语音识别性能。我们将这些系统与oracle系统进行比较,在oracle系统中将测试话语呈现给匹配的特定于口音的识别器,并与在独立于口音的系统中合并声学和语言模型训练数据。我们的调查基于南非英语的南非荷兰语(AE),黑人(BE)和白人(EE)口音。我们发现,当按发音将重音分类时,对于AE + EE重音对,并行系统的性能优于oracle系统,而对BE + EE则相反。当基于每个扬声器进行口音识别时,两个口音对均获得预言或更好的性能。此外,基于多口音声学建模的并行系统(其允许选择性地跨口音共享声学训练数据)优于使用特定于口音的声学模型的并行系统。前者比使用口音和语言模型的独立于口音的识别产生更好的性能。

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