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Point Process Models for Spotting Keywords in Continuous Speech

机译:在连续语音中发现关键词的点过程模型

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We investigate the hypothesis that the linguistic content underlying human speech may be coded in the pattern of timings of various acoustic ldquoeventsrdquo (landmarks) in the speech signal. This hypothesis is supported by several strands of research in the fields of linguistics, speech perception, and neuroscience. In this paper, we put these scientific motivations to the test by formulating a point process-based computational framework for the task of spotting keywords in continuous speech. We find that even with a noisy and extremely sparse phonetic landmark-based point process representation, keywords can be spotted with accuracy levels comparable to recently studied hidden Markov model-based keyword spotting systems. We show that the performance of our keyword spotting system in the high-precision regime is better predicted by the median duration of the keyword rather than simply the number of its constituent syllables or phonemes. When we are confronted with very few (in the extreme case, zero) examples of the keyword in question, we find that constructing a keyword detector from its component syllable detectors provides a viable approach.
机译:我们研究了一种假设,即人类语音所基于的语言内容可能会以语音信号中各种声学事件(地标)的时序模式进行编码。该假设得到语言学,语音感知和神经科学领域的几项研究的支持。在本文中,我们通过建立基于点过程的计算框架来检测连续语音中关键字的任务,将这些科学动机进行了测试。我们发现,即使使用嘈杂且稀疏的基于语音界标的点过程表示,也可以以与最近研究的基于隐马尔可夫模型的隐藏关键字发现系统相当的准确性来发现关键字。我们表明,通过高精度的关键字持续时间,而不是简单地根据其组成的音节或音素的数量,可以更好地预测关键字搜索系统在高精度状态下的性能。当我们面对的关键词很少(在极端情况下为零)示例时,我们发现从其组成的音节检测器构造关键字检测器提供了一种可行的方法。

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