基于自动发现声学模式的查询扩展的口语内容无监督语义检索

Yun-Chiao Li, Hung-yi Lee, Cheng-Tao Chung, Chun-an Chan, Lin-Shan Lee
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引用次数: 10

摘要

本文提出了一种以完全无监督的方式检索语义相关口语内容的初步尝试。口语内容检索的无监督方法很有吸引力,因为可以绕过对与口语内容合理匹配的注释数据的需求来训练声学和语言模型。然而,几乎所有这样的无监督方法都侧重于口语术语检测,或者使用模板匹配技术(如动态时间规整(DTW))或基于模型的方法返回包含查询的口语片段。然而,用户通常更喜欢检索与查询在语义上相关的所有对象,但不一定包括查询术语。本文提出了一种不同的方法。我们将档案中的语音片段转录成以无监督方法自动发现的声学模式序列。对于语音形式的输入查询,使用DTW首次检索获得的存档中top-N个语音段被视为伪相关的。因此,在这些片段中经常出现的声学模式被认为是与查询相关的,并用于查询扩展。对普通话广播新闻进行的初步实验提供了非常令人鼓舞的结果。
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Towards unsupervised semantic retrieval of spoken content with query expansion based on automatically discovered acoustic patterns
This paper presents an initial effort to retrieve semantically related spoken content in a completely unsupervised way. Unsupervised approaches of spoken content retrieval is attractive because the need for annotated data reasonably matched to the spoken content for training acoustic and language models can be bypassed. However, almost all such unsupervised approaches focus on spoken term detection, or returning the spoken segments containing the query, using either template matching techniques such as dynamic time warping (DTW) or model-based approaches. However, users usually prefer to retrieve all objects semantically related to the query, but not necessarily including the query terms. This paper proposes a different approach. We transcribe the spoken segments in the archive to be retrieved through into sequences of acoustic patterns automatically discovered in an unsupervised method. For an input query in spoken form, the top-N spoken segments from the archive obtained with the first-pass retrieval with DTW are taken as pseudo-relevant. The acoustic patterns frequently occurring in these segments are therefore considered as query-related and used for query expansion. Preliminary experiments performed on Mandarin broadcast news offered very encouraging results.
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