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Wheezing Sound Separation Based on Informed Inter-Segment Non-Negative Matrix Partial Co-Factorization

机译:基于信息间非负矩阵部分协同因子的喘息声分离

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摘要

Wheezing reveals important cues that can be useful in alerting about respiratory disorders, such as Chronic Obstructive Pulmonary Disease. Early detection of wheezing through auscultation will allow the physician to be aware of the existence of the respiratory disorder in its early stage, thus minimizing the damage the disorder can cause to the subject, especially in low-income and middle-income countries. The proposed method presents an extended version of Non-negative Matrix Partial Co-Factorization (NMPCF) that eliminates most of the acoustic interference caused by normal respiratory sounds while preserving the wheezing content needed by the physician to make a reliable diagnosis of the subject’s airway status. This extension, called Informed Inter-Segment NMPCF (IIS-NMPCF), attempts to overcome the drawback of the conventional NMPCF that treats all segments of the spectrogram equally, adding greater importance for signal reconstruction of repetitive sound events to those segments where wheezing sounds have not been detected. Specifically, IIS-NMPCF is based on a bases sharing process in which inter-segment information, informed by a wheezing detection system, is incorporated into the factorization to reconstruct a more accurate modelling of normal respiratory sounds. Results demonstrate the significant improvement obtained in the wheezing sound quality by IIS-NMPCF compared to the conventional NMPCF for all the Signal-to-Noise Ratio (SNR) scenarios evaluated, specifically, an SDR, SIR and SAR improvement equals 5.8 dB, 4.9 dB and 7.5 dB evaluating a noisy scenario with SNR = −5 dB.
机译:喘息揭示了重要提示,可用于提醒呼吸系统疾病,例如慢性阻塞性肺疾病。通过听诊早期发现喘息可使医师意识到呼吸系统疾病的早期存在,从而将呼吸系统疾病可能对受试者造成的损害降至最低,尤其是在低收入和中等收入国家。所提出的方法提出了非负矩阵部分共因子化(NMPCF)的扩展版本,它消除了正常呼吸音引起的大部分声学干扰,同时保留了医师对可靠诊断患者气道状态所需的喘息内容。 。此扩展称为段间通知NMPCF(IIS-NMPCF),它试图克服常规NMPCF的缺点,该NMPCF对频谱图的所有段均等地对待,从而为重复声音事件的信号重建对那些具有喘息声的段提供了更大的重要性。未检测到。具体地说,IIS-NMPCF基于一个基础共享过程,在该过程中,将由喘息检测系统通知的段间信息合并到因式分解中,以重建正常呼吸声的更准确建模。结果表明,在评估的所有信噪比(SNR)情况下,与常规NMPCF相比,IIS-NMPCF在喘息音质方面均获得了显着改善,特别是SDR,SIR和SAR改善分别为5.8 dB,4.9 dB 7.5 dB评估SNR = -5 dB的嘈杂场景。

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