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Improving acoustic based keyword spotting using LVCSR lattices

机译:使用LVCSR格改进基于声学的关键字发现

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This paper investigates detection of English keywords in a conversational scenario using a combination of acoustic and LVCSR based keyword spotting systems. Acoustic KWS systems search predefined words in parameterized spoken data. Corresponding confidences are represented by likelihood ratios given the keyword models and a background model. First, due to the especially high number of false-alarms, the acoustic KWS system is augmented with confidence measures estimated from corresponding LVCSR lattices. Then, various strategies to combine scores estimated by the acoustic and several LVCSR based KWS systems are explored. We show that a linear regression based combination significantly outperforms other (model-based) techniques. Due to that, the relative number of false-alarms of the combined KWS system decreased by more than 50% compared to the acoustic KWS system. Finally, an attention is also paid to the complexities of the KWS systems enabling them to potentially be exploited in real-detection tasks.
机译:本文研究了基于声学和基于LVCSR的关键字发现系统在会话情景中对英语关键字的检测。声学KWS系统在参数化的语音数据中搜索预定义的单词。给定关键字模型和背景模型,相应的置信度由似然比表示。首先,由于错误警报的数量特别多,声学KWS系统通过从相应LVCSR晶格估计的置信度进行了增强。然后,探索各种策略来组合由声学和几个基于LVCSR的KWS系统估计的分数。我们表明,基于线性回归的组合明显优于其他(基于模型的)技术。因此,与声学KWS系统相比,组合式KWS系统的错误警报的相对数量减少了50%以上。最后,还应注意KWS系统的复杂性,使它们有可能在实际检测任务中被利用。

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