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CASCADED HIDDEN MARKOV MODEL FOR META-STATE ESTIMATION

机译:用于级态估计的级联隐马尔可夫模型

摘要

A method and system for training an audio analyzer (114) to identify asynchronous segments of audio types using sample data sets, the sample data set being representative of audio signal which segmentation is desired. The system and method then label asynchronous segments of audio samples, collected at the target site, into a plurality of categories by cascading hidden Markov models (HMM). The cascaded HMMs consist of 2 stages, the output of the first stage HMM (208) being transformed and used as observation inputs to the second stage HMM (212). This cascaded HMM approach allows for modeling processes with complex temporal characteristics by using training data. It also contains a flexible framework that allows for segments of varying duration. The system and method are particularly useful in identifying and separating segments of the human voice for voice recognition systems from other audio such as music.
机译:一种用于训练音频分析器(114)以使用样本数据集来识别音频类型的异步片段的方法和系统,该样本数据集表示期望分割的音频信号。然后,该系统和方法通过级联隐藏的马尔可夫模型(HMM),将在目标站点收集的音频样本的异步片段标记为多个类别。级联的HMM包括两个阶段,第一阶段的HMM(208)的输出被变换并用作第二阶段的HMM(212)的观察输入。这种级联的HMM方法允许通过使用训练数据对具有复杂时间特征的过程进行建模。它还包含一个灵活的框架,该框架允许不同持续时间的段。该系统和方法在识别和分离用于语音识别系统的人类语音片段与其他音频(例如音乐)中特别有用。

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