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Resonance based respiratory sound decomposition aiming at localization of crackles in noisy measurements

机译:基于共振的呼吸声分解,旨在在嘈杂的测量中定位裂纹

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In this work, resonance based decomposition of lung sounds that aims to separate wheeze, crackle and vesicular sounds into three individual channels while automatically localizing crackles for both synthetic and real data is presented. Previous works focus on stationary-non stationary discrimination to separate crackles and vesicular sounds disregarding wheezes which are stationary as compared to crackles. However, wheeze sounds include important cues about the underlying pathology. Using two different threshold methods and synthetic sound generation scenarios in the presence of wheezes, resonance based decomposition performs 89.5 % crackle localization recall rate for white Gaussian noise and 98.6 % crackle localization recall rate for healthy vesicular sound treated as noise at low signal-to-noise ratios. Besides, an adaptive threshold determination which is independent from the channel at which it will be applied is used and is found to be robust to noise.
机译:在这项工作中,提出了基于共振的肺音分解,旨在将喘息声,crack啪声和囊泡声分离为三个单独的通道,同时自动定位合成和真实数据的crack啪声。以前的工作着眼于平稳-非平稳的辨别力,以区分杂音和囊泡声音,而忽略了与杂音相比静止的喘鸣声。但是,喘息声包括有关潜在病理的重要线索。使用两种不同的阈值方法和存在喘鸣声的合成声音生成方案,基于共振的分解对高斯白噪声产生的裂纹定位召回率达到89.5%,对于被视为低信噪比的健康囊泡声音,其谐振的裂纹定位召回率达到98.6%。噪声比。此外,使用了独立于将要应用该信道的信道的自适应阈值确定,并且发现该噪声对噪声具有鲁棒性。

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