Optimal vowels measurements for Obstructive Sleep Apnea Detection Using Speech Signals

Kang-Gao Pang, Tai-Chiu Hsung, Alex Ka-Wing Law, Winnie W S Choi
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引用次数: 1

Abstract

In Obstructive Sleep Apnea (OSA) detection using speech signal during awake, traditional speech-based methods adopt speech features such as Formants and MFCC. As the OSA voice is pathological, the parameters for normal speech processing/recognition is not optimal for the detection. In this paper, we investigate the effects of Linear Predictive coder (LPC) order to the OSA detection. We further propose to adopt dual LPC for feature extractions. In the simulation using 66 OSA patients’ voice signals, we achieve the best accuracy of 95.45% and 86.36% with the proposed parameters using quadratic discriminant analysis classifier for multi-class (4 levels) OSA severity classification using resubstitution and leave-one-out method respectively. As compared to the typical parameters setting, the improvement of resubstitution and leave-one-out are 6.06% and 9.09% respectively.
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使用语音信号进行阻塞性睡眠呼吸暂停检测的最佳元音测量
在阻塞性睡眠呼吸暂停(OSA)醒时语音信号检测中,传统的基于语音的检测方法采用了共振峰和MFCC等语音特征。由于OSA语音是病理性的,正常语音处理/识别的参数对于检测来说不是最佳的。本文研究了线性预测编码器(LPC)阶数对OSA检测的影响。我们进一步建议采用双LPC进行特征提取。在对66例OSA患者语音信号的仿真中,采用二次判别分析分类器对多类(4级)OSA严重程度进行重替换和留一法分类,所提出的参数准确率分别达到95.45%和86.36%。与典型参数设置相比,重取代率和留一率分别提高了6.06%和9.09%。
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