1.Feature Extraction for Cough-sound Recognition Based on Principle Component Analysis and Non-uniform Filter-bank.
Chumei ZHU ; Hongqiang MO ; Lainfang TIAN ; Zeguang ZHENG
Journal of Biomedical Engineering 2015;32(4):746-750
Cough recognition provides important clinical information for the treatment of many respiratory diseases. A new Mel frequency cepstrum coefficient (MFCC) extracting method has been proposed on the basis of the distributional characteristics of cough spectrum. The whole frequency band was divided into several sub-bands, and the energy coefficient for each band was obtained by method of principle component analysis. Then non-uniform filter-bank in Mel frequency is designed to improve the extracting process of MFCC by distributing filters according to the spectrum energy coefficients. Cough recognition experiment using hidden Markov model was carried out, and the results
Cough
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Humans
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Markov Chains
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Principal Component Analysis
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Respiratory Tract Diseases
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diagnosis
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Sound
2.The endpoint detection of cough signal in continuous speech.
Guoqing YANG ; Hongqiang MO ; Wen LI ; Lianfang LIAN ; Zeguang ZHENG
Journal of Biomedical Engineering 2010;27(3):544-555
The endpoint detection of cough signal in continuous speech has been researched in order to improve the efficiency and veracity of manual recognition or computer-based automatic recognition. First, using the short time zero crossing ratio(ZCR) for identifying the suspicious coughs and getting the threshold of short time energy based on acoustic characteristics of cough. Then, the short time energy is combined with short time ZCR in order to implement the endpoint detection of cough in continuous speech. To evaluate the effect of the method, first, the virtual number of coughs in each recording was identified by two experienced doctors using the graphical user interface (GUI). Second, the recordings were analyzed by automatic endpoint detection program under Matlab7.0. Finally, the comparison between these two results showed: The error rate of undetected cough is 2.18%, and 98.13% of noise, silence and speech were removed. The way of setting short time energy threshold is robust. The endpoint detection program can remove most speech and noise, thus maintaining a lower rate of error.
Algorithms
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Artificial Intelligence
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Cough
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physiopathology
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Endpoint Determination
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Humans
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Pattern Recognition, Automated
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methods
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Signal Processing, Computer-Assisted
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Sound
3.An endpoint-detection algorithm of surface electromyography insensitive to electrocardiogram interference.
Weizhao XU ; Hongqiang MO ; Lianfang TIAN ; Demiao OU
Journal of Biomedical Engineering 2018;35(6):953-958
Surface electromyography (sEMG) has been widely used in the study of clinical medicine, rehabilitation medicine, sports, etc., and its endpoints should be detected accurately before analyzing. However, endpoint detection is vulnerable to electrocardiogram (ECG) interference when the sEMG recorders are placed near the heart. In this paper, an endpoint-detection algorithm which is insensitive to ECG interference is proposed. In the algorithm, endpoints of sEMG are detected based on the short-time energy and short-time zero-crossing rates of sEMG. The thresholds of short-time energy and short-time zero-crossing rate are set according to the statistical difference of short-time zero-crossing rate between sEMG and ECG, and the statistical difference of short-time energy between sEMG and the background noise. Experiment results on the sEMG of rectus abdominis muscle demonstrate that the algorithm detects the endpoints of the sEMG with a high accuracy rate of 95.6%.