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Efficient Communication Overhead Reduction using Polygonal Approximation-based ECG Signal Compression

机译:使用基于多边形近似的ECG信号压缩的高效通信开销减少

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ECG signal requires a high sampling frequency of 100 to 1000 Hz, as well as long measurement times of longer than 24 hours. Therefore, efficient data compression for storage and transmission of data is required. ECG signal can be represented by a fiducial point composed of the onset, offset, and peak, which are essential for ECG signal analysis. Detecting the onset and offset are ambiguous because the feature values are similar to those of the surrounding samples. In this paper, we represent ECG signal as vertices by polygonal approximation, and suggest an auxiliary signal generated by the amplitude change rate between vertices. The proposed method can compress the number of data bits to about 89.26% and preserve the fiducial points as vertices. Also, we analyze the features of each vertices and determine the fiducial points. The clustering results of QRS complex were stable with the QT-DB provided by Physionet.
机译:ECG信号需要100至1000 Hz的高采样频率,以及长度超过24小时的长测量时间。因此,需要有效的数据压缩来存储和传输数据。 ECG信号可以由由开始,偏移和峰组成的基准点表示,这对于ECG信号分析至关重要。检测开始和偏移是模糊的,因为特征值类似于周围样本的特征值。在本文中,我们通过多边形近似来表示ECG信号作为顶点,并提示由顶点之间的幅度变化率产生的辅助信号。所提出的方法可以将数据位数压缩到大约89.26 %并保留为顶点的基准点。此外,我们分析了每个顶点的特征并确定基准点。 QRS复合物的聚类结果与PhysoioNet提供的QT-DB稳定。

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