A Bag of Wavelet Features for Snore Sound Classification

Annals of biomedical engineering(2019)

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摘要
Snore sound (SnS) classification can support a targeted surgical approach to sleep related breathing disorders. Using machine listening methods, we aim to find the location of obstruction and vibration within a subject’s upper airway. Wavelet features have been demonstrated to be efficient in the recognition of SnSs in previous studies. In this work, we use a bag-of-audio-words approach to enhance the low-level wavelet features extracted from SnS data. A Naïve Bayes model was selected as the classifier based on its superiority in initial experiments. We use SnS data collected from 219 independent subjects under drug-induced sleep endoscopy performed at three medical centres. The unweighted average recall achieved by our proposed method is 69.4
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关键词
Bag-of-audio-words,Drug-induced sleep endoscopy,Obstructive sleep apnea,Snore sound,Wavelets
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