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Mixed-phase modeling of snore sounds within a nonlinear framework for component identification

机译:非线性识别框架中打ore声的混合相位建模,用于组件识别

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Summary form only given. Snoring is the earliest and the most prevalent symptom of obstructive sleep apnea (OSA), a serious disease caused by the collapse of upper airways during sleep. In this paper, we model snore related sounds (SRS) as the response of a mixed-phase system (total airways response, TAR) to a source excitation at the input. The TAR/source model is similar to the vocal tract/source model in speech synthesis, and is capable of capturing acoustical changes brought about by the collapsing upper airways in OSA. To estimate components of the TAR/source model, preserving true phase information, we develop a novel non-linear framework based on higher-order statistics (HOS). Working on a clinical database of signals, we show that TAR is indeed a mixed-phased signal, and thus correlation (power spectrum) based conventional techniques cannot completely describe snoring sounds.
机译:仅提供摘要表格。打nor是阻塞性睡眠呼吸暂停(OSA)的最早和最普遍的症状,这是一种严重的疾病,由睡眠中上呼吸道塌陷引起。在本文中,我们将打sn相关声音(SRS)建模为混合相系统对输入源激励的响应(总气道响应,TAR)。 TAR /源模型与语音合成中的声道/源模型相似,并且能够捕获OSA中上呼吸道塌陷所带来的声学变化。为了估计TAR /源模型的组成部分,并保留真实的相位信息,我们开发了一种基于高阶统计量(HOS)的新型非线性框架。在信号的临床数据库上进行的研究表明,TAR确实是混合相位的信号,因此基于相关性(功率谱)的常规技术无法完全描述打呼sound的声音。

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