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Improving Keyword Recognition of Spoken Queries by Combining Multiple Speech Recognizer's Outputs for Speech-driven WEB Retrieval Task

机译:通过组合多个语音识别器的输出以执行语音驱动的WEB检索任务,提高口语查询的关键字识别

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This paper presents speech-driven Web retrieval models which accept spoken search topics (queries) in the NTCIR-3 Web retrieval task. The major focus of this paper is on improving speech recognition accuracy of spoken queries and then improving retrieval accuracy in speech-driven Web retrieval. We experimentally evaluated the techniques of combining outputs of multiple LVCSR models in recognition of spoken queries. As model combination techniques, we compared the SVM learning technique with conventional voting schemes such as ROVER. In addition, for investigating the effects on the retrieval performance in vocabulary size of the language model, we prepared two kinds of language models: the one's vocabulary size was 20,000, the other's one was 60,000. Then, we evaluated the differences in the recognition rates of the spoken queries and the retrieval performance. We showed that the techniques of multiple LVCSR model combination could achieve improvement both in speech recognition and retrieval accuracies in speech-driven text retrieval. Comparing with the retrieval accuracies when an LM with a 20,000/60,000 vocabulary size is used in an LVCSR system, we found that the larger the vocabulary size is, the better the retrieval accuracy is.
机译:本文介绍了语音驱动的Web检索模型,该模型在NTCIR-3 Web检索任务中接受语音搜索主题(查询)。本文的主要重点是提高口头查询的语音识别准确性,然后提高语音驱动的Web检索中的检索准确性。我们通过实验评估了将多个LVCSR模型的输出进行组合以识别语音查询的技术。作为模型组合技术,我们将SVM学习技术与常规投票方案(如ROVER)进行了比较。另外,为了研究语言模型的词汇量对检索性能的影响,我们准备了两种语言模型:一个的词汇量为20,000,另一种的词汇量为60,000。然后,我们评估了口头查询的识别率和检索性能的差异。我们表明,多种LVCSR模型组合技术可以在语音驱动的文本检索中实现语音识别和检索准确性方面的改进。与在LVCSR系统中使用词汇量为20,000 / 60,000的LM时的检索准确性进行比较,我们发现词汇量越大,检索精度越好。

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