Abstract

Recently, with the active development of wearable electrocardiogram (ECG) devices such as smart-bands or portable ECG devices, efficient ECG signal processing technology that can be applied in real-time has been actively studied. However, a wearable ECG device is exposed to various noise situations, thereby reducing the reliability of the detected R point or QRS interval. In addition, as early warning techniques in healthcare systems have been studied, real-time ECG signal processing techniques have become very important in wearable ECG devices. In this paper, we propose an efficient real-time R and QRS detection method using two kinds of first-order derivative filters and a max filter to analyze ECG signals measured from wearable ECG devices in real-time. The proposed method detects the R point and QRS interval in units of a sliding window for real-time processing and combines the detected R points in each sliding window. Also, the reliability of the detected R points and RR intervals is examined through noise region analysis using the histogram characteristic of a sample point. The performance of the proposed method was verified by the MIT-BIH database (DB), CYBHi DB and real ECG data measured from the developed wearable ECG patch. The proposed method achieves Se = 99.80%, +P = 99.80%, and DER = 0.36% against MIT-BIH DB. In addition, the proposed method enables accurate R point detection and heart rate variability (HRV) analysis even with noisy ECG signals.

Highlights

  • ECG conveys valuable diagnostic information about heart functioning

  • This paper presents an efficient real-time R point and QRS detection technique using two kinds of

  • Thetwo proposed of derivative filters and a max filter with signal processing for a sliding window unit

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Summary

Introduction

ECG conveys valuable diagnostic information about heart functioning. Its analysis and processing play an important and significant role in the diagnosis of heart diseases. A typical electrocardiogram consists of five characteristic waves: P, Q, R, S, and T waves. This series of waveforms correspond to each phase of cardiac activities [1]. The identification of these waves is a critical step in analyzing the ECG signal and has been made possible by analyzing their morphological patterns. The heartbeats of the MIT-BIH DB are classified into five types according to the AAMI standard [2]

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