Hu Weiping, Lai Kefang, Du Minghui, Chen Ruchong, Zhong Shijung, Chen Rongchang, Zhong Nanshan
College of Electronics and Communication Engineering, South China University of Technology, Guangzhou 510640, China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2009 Apr;26(2):277-81.
Cough is one of the most common symptoms of many respiratory diseases; the characteristics of intensity and frequency of cough sound offer important clinical messages. When using these messages, we have need to differentiate the cough sound from the other sounds such as speech voice, throat clearing sound and nose clearing sound. In this paper, based on Empirical Mode Decomposition (EMD) and Hidden Markov Model (HMM), we proposed a novel method to analyze and detect cough sound. Employing the property of adaptive dyadic filter banks of EMD, we gained the mean energy distribution in the frequency domain of the signals in order to analyze the statistical characteristics of cough sound and of other sounds not accompanied by cough, and then we found the optimal characteristics for the recognition using HMM. The experiments on clinical date showed that this optimal characteristic method effectively improved the detective rate of cough sound.
咳嗽是许多呼吸道疾病最常见的症状之一;咳嗽声音的强度和频率特征提供了重要的临床信息。在利用这些信息时,我们需要将咳嗽声与其他声音,如语音、清嗓声和擤鼻声区分开来。本文基于经验模态分解(EMD)和隐马尔可夫模型(HMM),提出了一种分析和检测咳嗽声的新方法。利用EMD的自适应二进滤波器组特性,获取信号频域中的平均能量分布,以分析咳嗽声及其他非咳嗽伴随声音的统计特征,然后利用HMM找到识别的最优特征。临床数据实验表明,这种最优特征方法有效提高了咳嗽声的检测率。