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Dialogue Speech Recognition by Combining Hierarchical Topic Classification and Language Model Switching

机译:结合主题分类和语言模型切换的对话语音识别

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摘要

An efficient, scalable speech recognition architecture combining topic detection and topic-dependent language modeling is proposed for multi-domain spoken language systems. In the proposed approach, the inferred topic is automatically detected from the user's utterance, and speech recognition is then performed by applying an appropriate topic-dependent language model. This approach enables users to freely switch between domains while maintaining high recognition accuracy. As topic detection is performed on a single utterance, detection errors may occur and propagate through the system. To improve robustness, a hierarchical back-off mechanism is introduced where detailed topic models are applied when topic detection is confident and wider models that cover multiple topics are applied in cases of uncertainty. The performance of the proposed architecture is evaluated when combined with two topic detection methods: unigram likelihood and SVMs (Support Vector Machines). On the ATR Basic Travel Expression Corpus, both methods provide a significant reduction in WER (9.7% and 10.3%, respectively) compared to a single language model system. Furthermore, recognition accuracy is comparable to performing decoding with all topic-dependent models in parallel, while the required computational cost is much reduced.
机译:针对多域口语系统,提出了一种有效的,可扩展的语音识别架构,该架构将主题检测和主题相关的语言建模结合在一起。在提出的方法中,从用户的话语中自动检测出推断出的主题,然后通过应用适当的与主题相关的语言模型来执行语音识别。这种方法使用户可以在域之间自由切换,同时保持较高的识别精度。当对单个话语执行主题检测时,可能会发生检测错误并在系统中传播。为了提高鲁棒性,引入了一种分层的退避机制,其中,当主题检测有信心时,将应用详细的主题模型;在不确定的情况下,将应用涵盖多个主题的更广泛的模型。当与两种主题检测方法(字母组合似然法和SVM(支持向量机))结合使用时,可以评估所提出体系结构的性能。在ATR基本旅行表达语料库上,与单一语言模型系统相比,这两种方法均显着降低了WER(分别为9.7%和10.3%)。此外,识别精度可与并行使用所有主题相关模型进行解码相媲美,同时所需的计算成本大大降低。

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