A strong anti-noise segmentation algorithm based on variational mode decomposition and multi-wavelet for wearable heart sound acquisition system.

Shiji Xiahou, Yuxuan Liang, M. Ma, Min Du
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引用次数: 2

Abstract

Wearable devices have now been widely used in the acquisition and measurement of heart sound signals with good effect. However, the wearable heart sound acquisition system (WHSAS) will face more noise compared with the traditional system, such as Gaussian white noise, powerline interference, colored noise, motion artifact noise, and lung sound noise, because users often wear these devices for running, walking, jumping or various strong noise occasions. In a strong noisy environment, WHSAS needs a high-precision segmentation algorithm. This paper proposes a segmentation algorithm based on Variational Mode Decomposition (VMD) and multi-wavelet. In the algorithm, various noises are layered and filtered out using VMD. The cleaner signal is fed into multi-wavelet to construct a time-frequency matrix. Then, the principal component analysis method is applied to reduce the dimension of the matrix. After extracting the high order Shannon envelope and Teager energy envelope of the heart sound, we accurately segment the signals. In this paper, the algorithm is verified through our developing WHSAS. The results demonstrate that the proposed algorithm can achieve high-precision segmentation of the heart sound under a mixed noise condition.
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基于变分模态分解和多小波的可穿戴心音采集系统强抗噪分割算法。
可穿戴设备已广泛应用于心音信号的采集和测量,并取得了良好的效果。然而,与传统系统相比,可穿戴式心音采集系统(WHSAS)将面临更多的噪声,如高斯白噪声、电线线干扰、彩色噪声、运动伪影噪声、肺声噪声等,因为用户经常佩戴这些设备进行跑步、行走、跳跃或各种强噪声场合。在强噪声环境下,WHSAS需要高精度的分割算法。提出了一种基于变分模态分解(VMD)和多小波的图像分割算法。在该算法中,各种噪声被分层并使用VMD过滤掉。将清洁信号送入多小波中构造时频矩阵。然后,采用主成分分析法对矩阵进行降维。提取心音的高阶Shannon包络和Teager能量包络,对信号进行准确分割。本文通过开发的WHSAS对该算法进行了验证。实验结果表明,该算法能够在混合噪声条件下实现心音的高精度分割。
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