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Log-frequency spectrogram for respiratory sound monitoring

机译:对数频率频谱图用于呼吸声监测

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Computerized patient monitoring provides valuable information on clinical disorders in medical practice, and it triggers the need to simplify the extent of resources required to describe large set of complex biomedical signals. In this paper, we present a new signal quantification method based on block-wise similarity measurement between the neighboring regions in the optimized log-frequency spectrogram of audio signals. Low dimensional cepstral feature set for signal quantification is then formed from the reconstructed similarity matrix using 2D principal component analysis. The effectiveness of the method is verified with real respiratory sound (RS) signals for the purpose of abnormal RS detection towards RS monitoring. Unlike conventional pathological RS detection methods which extract features from well-segmented inspiratory/ expiratory phase segments, the proposed scheme is able to perform fast detection of various types of abnormality for unsegmented signals.
机译:计算机化的患者监测可提供有关医学实践中临床疾病的有价值的信息,并触发了简化描述大量复杂生物医学信号所需资源范围的需求。在本文中,我们提出了一种新的信号量化方法,该方法基于音频信号的优化对数频率频谱图中相邻区域之间的逐块相似性测量。然后使用2D主成分分析从重构的相似度矩阵中形成用于信号量化的低维倒谱特征集。该方法的有效性已通过真实的呼吸声(RS)信号进行了验证,目的是针对RS监视进行异常RS检测。与常规的病理RS检测方法不同,该方法从分段良好的吸气/呼气相位段中提取特征,所提出的方案能够对未分段的信号进行各种类型的异常的快速检测。

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