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Automatic detection, segmentation and classification of snore related signals from overnight audio recording

机译:自动检测,分割和分类来自夜间录音的打sn相关信号

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摘要

Snore related signals (SRS) have been found to carry important information about the snore source and obstruction site in the upper airway of an Obstructive Sleep Apnea/Hypopnea Syndrome (OSAHS) patient. An overnight audio recording of an individual subject is the preliminary and essential material for further study and diagnosis. Automatic detection, segmentation and classification of SRS from overnight audio recordings are significant in establishing a personal health database and in researching the area on a large scale. In this study, the authors focused on how to implement this intelligent method by combining acoustic signal processing with machine learning techniques. The authors proposed a systematic solution includes SRS events detection, classifier training, automatic segmentation and classification. An overnight audio recording of a severe OSAHS patient is taken as an example to demonstrate the feasibility of their method. Both the experimental data testing and subjective testing of 25 volunteers (17 males and 8 females) demonstrated that their method could be effective in automatic detection, segmentation and classification of the SRS from original audio recordings.
机译:已发现打相关信号(SRS)携带有关阻塞性睡眠呼吸暂停/呼吸不足综合征(OSAHS)患者上呼吸道打sn源和阻塞部位的重要信息。单个对象的夜间录音是进行进一步研究和诊断的基础和重要资料。从隔夜录音中自动检测,分割和分类SRS对于建立个人健康数据库和大规模研究该领域非常重要。在这项研究中,作者集中于如何通过结合声学信号处理和机器学习技术来实现这种智能方法。作者提出了一种系统的解决方案,包括SRS事件检测,分类器训练,自动分段和分类。以一个严重的OSAHS患者的夜间录音为例,来证明他们的方法的可行性。对25名志愿者(17名男性和8名女性)的实验数据测试和主观测试均表明,他们的方法可以有效地对原始录音中的SRS进行自动检测,分割和分类。

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