A New Signal Processing Toolbox and Real-Time EMG and ECG Analysis

H. Ozkan, Ebrar Selva Ural, Aleyna Kalender, Fatma Elif Tuncer
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引用次数: 0

Abstract

Biomedical signals acquisition, processing and visualizing with accurate and high quality play a very important role in the diagnosis of many diseases. For this purpose, in this study, a one-dimensional signal processing toolbox has been designed using the MATLAB Graphical User Interface (GUI). Real-time medical signals can be obtained and analyzed in time and frequency domains. This toolbox can be used to analyze a signal that is pre-recorded or one dimensional that is created by a user. Due to the toolbox developed, the data which are acquired from EMG and ECG cards and digitized in the Arduino microprocessor are displayed in real time on the computer screen. Also, the high-frequency noises in the ECG signal have been eliminated by designing a Parks-McClellan low pass FIR filter. Heart rate has been calculated with high accuracy by counting R peak points per minute from the noise reduced ECG signal automatically. By using the developed signal processing toolbox, any kind of general or medical signals can be analyzed in more detail and fast.
一个新的信号处理工具箱和实时肌电和心电分析
准确、高质量的生物医学信号采集、处理和可视化在许多疾病的诊断中起着非常重要的作用。为此,本研究利用MATLAB图形用户界面(GUI)设计了一维信号处理工具箱。实时医疗信号可以在时域和频域进行获取和分析。此工具箱可用于分析预先录制的信号或由用户创建的一维信号。由于开发了工具箱,从肌电和心电卡上采集的数据在Arduino微处理器上数字化后,实时显示在计算机屏幕上。通过设计Parks-McClellan低通FIR滤波器,消除了心电信号中的高频噪声。通过自动从降噪后的心电信号中计算每分钟R个峰值点来计算心率,具有较高的准确性。通过开发的信号处理工具箱,可以更详细、更快速地分析任何类型的一般或医疗信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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