Vilayphone Vilaysouk, Amr H. Nour-Eldin, Dermot Connolly
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引用次数: 0
摘要
在本文中,我们扩展了之前在系统引导语音语篇检测方面的工作。虚拟助手可以利用这种二进制分类在系统和用户之间创建更自然流畅的交互。我们探索了两种方法,它们都提高了先前模型的等误率(EER)性能。第一种方法通过整合基于 ASR 解码器的特征,将其作为模型最终分类阶段的额外输入,从而利用 ASR 模型独立捕获的补充信息。这相对将 EER 性能提高了 13%。第二种方法将单词嵌入进一步整合到架构中,与第一种方法相结合后,EER 性能比基线方法显著提高了 48%。
Improving Identification of System-Directed Speech Utterances by Deep Learning of ASR-Based Word Embeddings and Confidence Metrics
In this paper, we extend our previous work on the detection of system-directed speech utterances. This type of binary classification can be used by virtual assistants to create a more natural and fluid interaction between the system and the user. We explore two methods that both improve the Equal-Error-Rate (EER) performance of the previous model. The first exploits the supplementary information independently captured by ASR models through integrating ASR decoder-based features as additional inputs to the final classification stage of the model. This relatively improves EER performance by 13%. The second proposed method further integrates word embeddings into the architecture and, when combined with the first method, achieves a significant EER performance improvement of 48%, relative to that of the baseline.