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Enhancing automatically discovered multi-level acoustic patterns considering context consistency with applications in spoken term detection

机译:考虑到上下文一致性以及在语音术语检测中的应用,增强自动发现的多级声学模式

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This paper presents a novel approach for enhancing the multiple sets of acoustic patterns automatically discovered from a given corpus. In a previous work it was proposed that different HMM configurations (number of states per model, number of distinct models) for the acoustic patterns form a two-dimensional space. Multiple sets of acoustic patterns automatically discovered with the HMM configurations properly located on different points over this two-dimensional space were shown to be complementary to one another, jointly capturing the characteristics of the given corpus. By representing the given corpus as sequences of acoustic patterns on different HMM sets, the pattern indices in these sequences can be relabeled considering the context consistency across the different sequences. Good improvements were observed in preliminary experiments of pattern spoken term detection (STD) performed on both TIMIT and Mandarin Broadcast News with such enhanced patterns.
机译:本文提出了一种新颖的方法,用于增强从给定语料库中自动发现的多组声学模式。在先前的工作中,提出了针对声学模式的不同HMM配置(每个模型的状态数量,不同模型的数量)形成二维空间。 HMM配置正确地位于此二维空间上不同点上的自动发现的多组声学模式显示为相互补充,共同捕获了给定语料库的特征。通过将给定语料库表示为不同HMM集合上的声学模式序列,可以考虑不同序列之间的上下文一致性来重新标记这些序列中的模式索引。在TIMIT和普通话广播新闻上使用这种增强的模式进行模式口语检测(STD)的初步实验中,观察到了很好的改进。

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