[Improving adaptive noise reduction performance of body sound auscultation through linear preprocessing].

Hongqiang Mo, Xiang Tian, Bin Li, Junzhang Tian
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Abstract

Adaptive filtering methods based on least-mean-square (LMS) error criterion have been commonly used in auscultation to reduce ambient noise. For non-Gaussian signals containing pulse components, such methods are prone to weights misalignment. Unlike the commonly used variable step-size methods, this paper introduced linear preprocessing to address this issue. The role of linear preprocessing in improving the denoising performance of the normalized least-mean-square (NLMS) adaptive filtering algorithm was analyzed. It was shown that, the steady-state mean square weight deviation of the NLMS adaptive filter was proportional to the variance of the body sounds and inversely proportional to the variance of the ambient noise signals in the secondary channel. Preprocessing with properly set parameters could suppress the spikes of body sounds, and decrease the variance and the power spectral density of the body sounds, without significantly reducing or even with increasing the variance and the power spectral density of the ambient noise signals in the secondary channel. As a result, the preprocessing could reduce weights misalignment, and correspondingly, significantly improve the performance of ambient-noise reduction. Finally, a case of heart-sound auscultation was given to demonstrate how to design the preprocessing and how the preprocessing improved the ambient-noise reduction performance. The results can guide the design of adaptive denoising algorithms for body sound auscultation.

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[通过线性预处理提高体声听诊的自适应降噪性能]。
基于最小均方(LMS)误差准则的自适应滤波方法通常用于听诊,以减少环境噪声。对于包含脉冲成分的非高斯信号,这种方法容易造成权重失准。与常用的可变步长方法不同,本文引入了线性预处理来解决这一问题。分析了线性预处理在提高归一化最小均方(NLMS)自适应滤波算法去噪性能中的作用。结果表明,归一化最小均方自适应滤波器的稳态均方权重偏差与人体声音的方差成正比,与次级通道中环境噪声信号的方差成反比。利用适当设置的参数进行预处理,可以抑制体声的尖峰,降低体声的方差和功率谱密度,而不会明显降低甚至增加副声道环境噪声信号的方差和功率谱密度。因此,预处理可以减少权重失准,从而显著提高环境噪声抑制性能。最后,以心脏听诊为例,演示了如何设计预处理以及预处理如何改善环境噪声降低性能。这些结果可以指导体声听诊自适应去噪算法的设计。
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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
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