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A comparison and combination of methods for OOV word detection and word confidence scoring

机译:OOV词检测方法的比较与组合和词汇累积

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This paper examines an approach for combining two different methods for detecting errors in the output of a speech recognizer. The first method attempts to alleviate recognition errors by using an explicit model for detecting the presence of out-of-vocabulary (OOV) words. The second method identifies potentially misrecognized words from a set of confidence features extracted from the recognition process using a confidence scoring model. Since these two methods are inherently different, an approach which combines the techniques can provide significant advantages over either of the individual methods. In experiments in the JUPITER weather domain, we compare and contrast the two approaches and demonstrate the advantage of the combined approach. In comparison to either of the two individual approaches, the combined approach achieves over 25% fewer false acceptances of incorrectly recognized keywords (from 55% to 40%) at a 98% acceptance rate of correctly recognized keywords.
机译:本文介绍了一种组合两种不同方法来检测语音识别器的输出中的错误的方法。第一种方法通过使用用于检测词汇外(OOV)字的存在的显式模型来试图减轻识别错误。第二种方法识别来自使用置信度评分模型从识别过程中提取的一组置信度特征的潜在误导词。由于这两种方法本质上是不同的,因此结合了这些技术的方法可以提供优于各个方法的显着优点。在木星天气领域的实验中,我们比较和对比两种方法并展示了组合方法的优势。与两种各种方法中的任何一种相比,组合方法以正确识别的关键词的98%接受率为98%的验收率,达到了超过25%的错误接受量超过25%。

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