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Investigating neural network based query-by-example keyword spotting approach for personalized wake-up word detection in Mandarin Chinese

机译:基于神经网络的基于神经网络的查询关键字在普通话中的个性化唤醒词检测中的查询关键字点化方法

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We use query-by-example keyword spotting (QbyE-KWS) approach to solve the personalized wake-up word detection problem for small-footprint, low-computational cost on-device applications. QbyE-KWS takes keywords as templates, and matches the templates across an audio stream via DTW to see if the keyword is included. In this paper, we use neural networks as acoustic models to extract DNN/LSTM phoneme posterior features and LSTM embedding features. Specifically, we investigate the LSTM embedding feature extractor for different modeling units in Mandarin, spanning from phonemes to words. We also study the performances of two popular DTW approaches: S-DTW and SLN-DTW. SLN-DTW manages to accurately and effectively search the keyword in a long audio stream without the segmentation procedure that is used in S-DTW approaches. Our study shows that DNN phoneme posterior plus SLN-DTW approach achieves the highest computation efficiency and the state-of-the-art performance with 78% relative miss rate reduction as compared with the S-DTW approach. Word level LSTM embedding feature shows superior performance as compared with other embedding units.
机译:我们使用逐个示例关键字点发现(QBYE-KWS)方法来解决小型占地面积,低计算成本on-Device应用程序的个性化唤醒词检测问题。 qbye-kws将关键字视为模板,并通过dtw匹配音频流跨音频,以查看是否包含关键字。在本文中,我们使用神经网络作为声学模型,以提取DNN / LSTM音素后部特征和LSTM嵌入功能。具体而言,我们研究了普通话中的不同建模单元的LSTM嵌入特征提取器,跨越音素到单词。我们还研究了两个流行的DTW方法的表演:S-DTW和SLN-DTW。 SLN-DTW管理在长音频流中准确且有效地搜索关键字,而在S-DTW方法中使用的分段过程。我们的研究表明,与S-DTW方法相比,DNN音素后验水和SLN-DTW方法最高的计算效率和最先进的性能,相对错过率降低了78%。与其他嵌入单元相比,Word Level LSTM嵌入功能显示出卓越的性能。

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