基于通用语音码域的语音数据检索系统

K. Tanaka, Y. Itoh, H. Kojima, Nahoko Fujimura
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引用次数: 23

摘要

我们提出了一种新的语音处理框架,将所有语音数据编码为通用语音码(UPC)序列,并在此UPC域上构建语音识别、检索、消化等语音处理系统。首先,我们引入了一种基于国际音标(IPA)的亚语音段(SPS)集来处理多语言语音,并开发了一种从类IPA电话模型中估计SPS声学模型的方法。该框架的关键在于将环境自适应引入到SPS编码阶段。这使得将声音变化归一化和提取语音信号中包含的语言因子作为编码的SPS序列成为可能。我们通过构建一个基于SPS域的语音检索系统来验证这些特征。该系统可以在无词汇条件下从不同的环境语音数据中检索语音给出的关键短语。我们用日语和英语句子语音集展示了该系统的几个初步实验结果。
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Speech data retrieval system constructed on a universal phonetic code domain
We propose a novel speech processing framework, where all of the speech data are encoded into universal phonetic code (UPC) sequences and speech processing systems, such as speech recognition, retrieval, digesting, etc., are constructed on this UPC domain. As the first step, we introduce a sub-phonetic segment (SPS) set, based on IPA (international phonetic alphabet), to deal with multilingual speech and develop a procedure to estimate acoustic models of the SPS from IPA-like phone models. The key point of the framework is to employ environment adaptation into the SPS encoding stage. This makes it possible to normalize acoustic variations and extract the language factor contained in speech signals as encoded SPS sequences. We confirm these characteristics by constructing a speech retrieval system on the SPS domain. The system can retrieve key phrases, given by speech, from different environment speech data in a vocabulary-free condition. We show several preliminary experimental results on this system, using Japanese and English sentence speech sets.
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