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Mis-recognized utterance detection using multiple language models generated by clustered sentences

机译:使用由群集句子生成的多语言模型进行错误识别的话语检测

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摘要

In this paper, we propose a new method that detects mis-recognized utterances, based on voting scheme like ROVER. ROVER has two serious problems, 1) it is difficult to construct multiple speech recognition systems (SRSs), 2) calculation cost increases according to the number of SRSs. In contrast to the conventional ROVER, the proposed method uses multiple language models (LMs), general LM and sub LMs generated by clustered sentence, instead of different SRSs. Speech recognition with sub LMs is proceeded by rescoring, instead of parallel decodlug. Through experiments, the proposed method resulted in 18-point higher precision with 10% loss of recall from baseline, and 22-point higher precision with 20% loss of recall.
机译:在本文中,我们提出了一种基于像流动仪等投票方案的错误认可话语的新方法。 ROVER有两个严重的问题,1)难以构造多个语音识别系统(SRS),2)计算成本根据SRS的数量而增加。 与传统的流动镜相比,所提出的方法使用多种语言模型(LMS),一般LM和由聚簇句生成的子LM,而不是不同的SRS。 通过重新扫描,而不是并行DecodLug进行与子LMS的语音识别。 通过实验,所提出的方法导致了18分高精度,从基线召回10%,22点更高的精度,召回20%。

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