首页> 外文会议>International Conference on Spoken Language Processing; 20041004-08; Jeju(KR) >Unsupervised Topic Adaptation for Lecture Speech Retrieval
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Unsupervised Topic Adaptation for Lecture Speech Retrieval

机译:演讲语音检索的无监督主题自适应

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We are developing a cross-media information retrieval system, in which users can view specific segments of lecture videos by submitting text queries. To produce a text index, the audio track is extracted from a lecture video and a transcription is generated by automatic speech recognition. In this paper, to improve the quality of our retrieval system, we extensively investigate the effects of adapting acoustic and language models on speech recognition. We perform an MLLR-based method to adapt an acoustic model. To obtain a corpus for language model adaptation, we use the textbook for a target lecture to search a Web collection for the pages associated with the lecture topic. We show the effectiveness of our method by means of experiments.
机译:我们正在开发一种跨媒体信息检索系统,在该系统中,用户可以通过提交文本查询来查看演讲视频的特定片段。为了产生文本索引,从演讲视频中提取音轨,并通过自动语音识别生成转录。在本文中,为了提高检索系统的质量,我们广泛研究了适应声学和语言模型对语音识别的影响。我们执行基于MLLR的方法来适应声学模型。为了获得适用于语言模型的语料库,我们将教材用于目标讲座以在Web集合中搜索与讲座主题相关的页面。我们通过实验证明了我们方法的有效性。

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