基于声音传感的嵌入式心率分析

M. Rosół, L. Wieckowski
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引用次数: 2

摘要

心音图信号中心跳的准确位置对于S1和S2心音的正确分割和分类至关重要。由于在采集过程中包含噪声,并且由于实现涉及嵌入式系统,因此这项任务变得困难。在本文中,我们提出了一个基于单片机和MEMS麦克风的低成本的S1和S2心音定位和分类系统。给出了实验数据的时域和频域分析方法。心跳分割过程包括自相关来预测心跳周期的时间。利用快速傅立叶变换提取心脏的时频特征,分析心脏舒张和收缩周期。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embedded heart rate analysis based on sound sensing
The exact location of heartbeats in the phonocardiogram signal is crucial for correct segmentation and classification of the S1 and S2 heart sounds. This task becomes difficult due to the inclusion of noise in the acquisition process and due to the fact that the implementation concerns the embedded system. In this article, we present a low-cost system of location and classification of heart sounds in S1 and S2 based on a single-chip microcontroller and MEMS microphone. The experimental data analysis methods in time and frequency domains are also presented. The heartbeat segmentation process includes autocorrelation to predict the time of the heartbeat cycle. The time-frequency characteristics are extracted with a Fast Fourier Transform to analyze diastole and systole heart cycles.
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