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OUT-OF-VOCABULARY WORD DETECTION IN A SPEECH-TO-SPEECH TRANSLATION SYSTEM

机译:语音转换系统中的词汇单词检测

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In this paper we describe progress we have made in detecting out-of-vocabulary words (OOVs) for a speech-to-speech translation system for the purpose of playing back audio to the user for clarification and correction. Our OOV detector follows a strategy of first identifying a rough location of the OOV and then merging adjacent decoded words to cover the true OOV word. We show the advantage of our OOV detection strategy and report on improvements using a real-time implementation of a new Convolutional Neural Network acoustic model. We discuss why commonly used metrics for OOV detection do not meet our needs and explore an overlap metric as well as a Jaccard metric for evaluating our ability to detect the OOVs and localize them accurately in time. We have found different metrics to be useful at different stages of development.
机译:在本文中,我们描述了在语音转换系统中检测到词汇交换词(OOV)的进展,以便为用户播放向用户播放校正和校正。我们的Oov探测器首先识别OOV的粗略位置,然后将相邻解码单词合并以覆盖真正的OOV字。我们展示了我们OOV检测策略的优势,并使用新的卷积神经网络声学模型的实时实施提升了改进。我们讨论为什么OoV检测的常用度量不符合我们的需求,并探索重叠度量,以及jaccard指标,以评估我们检测OOV的能力并准确及时本地化它们。我们发现不同的指标在不同的发展阶段有用。

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