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Deep Learning Features for Robust Detection of Acoustic Events in Sleep-disordered Breathing

机译:深度学习功能可对睡眠障碍性呼吸中的声音事件进行鲁棒检测

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Sleep-disordered breathing (SDB) is a serious and prevalent condition, and acoustic analysis via consumer devices (e.g. smartphones) offers a low-cost solution to screening for it. We present a novel approach for the acoustic identification of SDB sounds, such as snoring, using bottleneck features learned from a corpus of whole-night sound recordings. Two types of bottleneck features are described, obtained by applying a deep autoencoder to the output of an auditory model or a short-term autocorrelation analysis. We investigate two architectures for snore sound detection: a tandem system and a hybrid system. In both cases, a `language model' (LM) was incorporated to exploit information about the sequence of different SDB events. Our results show that the proposed bottleneck features give better performance than conventional mel-frequency cepstral coefficients, and that the tandem system outperforms the hybrid system given the limited amount of labelled training data available. The LM made a small improvement to the performance of both classifiers.
机译:睡眠呼吸障碍(SDB)是一种严重且普遍的状况,通过消费类设备(例如智能手机)进行的声学分析为筛查呼吸提供了一种低成本的解决方案。我们提出了一种新的方法,可以使用从整夜录音中获取的瓶颈特征来对SDB声音进行声学识别,例如打呼。描述了两种类型的瓶颈特征,它们是通过将深层自动编码器应用于听觉模型或短期自相关分析的输出而获得的。我们研究了用于打sound声音检测的两种体系结构:串联系统和混合系统。在这两种情况下,都采用了“语言模型”(LM)以利用有关不同SDB事件序列的信息。我们的结果表明,提出的瓶颈特征比常规的mel频率倒谱系数具有更好的性能,并且在有限的可用标记训练数据量的情况下,串联系统的性能优于混合系统。 LM对两个分类器的性能进行了小幅改进。

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