结合分析属性和外观属性的心电信号人体识别

Yongjin Wang, K. Plataniotis, Dimitrios Hatzinakos
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引用次数: 78

摘要

在本文中,我们研究从心电图(ECG)信号中识别人类受试者。我们基于R波峰值的定位,将心电记录分割为单个心跳。提取两种类型的特征,即分析特征和外观特征来代表不同受试者的心跳信号特征。进行特征选择以找出重要的属性。我们比较了不同分类算法的性能。为了更好地利用不同类型特征的优势,我们提出了两种数据融合和分类方案。该系统的人体识别正确率为100%,心跳识别正确率为98.90%。提出的框架揭示了在心电信号中采用基于外观的分析的潜力,同时也展示了分层结构在模式识别问题中的优势。
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Integrating Analytic and Appearance Attributes for Human Identification from ECG Signals
In this paper, we investigate identification of human subjects from electrocardiogram (ECG) signals. We segment the ECG records into individual heartbeat based on the localization of R wave peaks. Two types of features, namely analytic and appearance features, are extracted to represent the characteristics of heartbeat signal of different subjects. Feature selection is performed to find out significant attributes. We compared the performance of different classification algorithms. To better utilize the advantages of different types of features, we proposed two schemes for data fusion and classification. Our system achieves promising results with 100% correct human identification rate and 98.90% accuracy for heartbeat identification. The proposed framework reveals the potential of employing appearance based analysis in ECG signal, yet demonstrates the advantage of a hierarchical architecture in pattern recognition problems.
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