针对顺序识别场景的带有诱饵的垃圾建模

Michael Levit, Shuangyu Chang, B. Buntschuh
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引用次数: 13

摘要

本文关注的是一个语音识别场景,其中两个不相等的ASR系统,一个快速与有限的资源,另一个显着慢但也更强大,以顺序的方式一起工作。特别是,我们关注于何时接受第一个识别器的结果以及何时需要咨询第二个识别器的决定。作为一种依赖于应用程序的垃圾建模,我们提出了一种算法,该算法通过第二个识别器的语言模型,用那些与该语法中的短语混淆的有效路径来增强第一个识别器的语法。我们展示了该算法如何比只关注识别置信度的系统高出约20%。
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Garbage modeling with decoys for a sequential recognition scenario
This paper is concerned with a speech recognition scenario where two unequal ASR systems, one fast with constrained resources, the other significantly slower but also much more powerful, work together in a sequential manner. In particular, we focus on decisions when to accept the results of the first recognizer and when the second recognizer needs to be consulted. As a kind of application-dependent garbage modeling, we suggest an algorithm that augments the grammar of the first recognizer with those valid paths through the language model of the second recognizer that are confusable with the phrases from this grammar. We show how this algorithm outperforms a system that only looks at recognition confidences by about 20% relative.
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