Feature-based segmentation of ECG signals

H. Krim, D.H. Brooks
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引用次数: 17

Abstract

Automatic segmentation of ECG signals is important in both clinical and research settings. Past algorithms have relied on incorporation of detailed heuristics. Here, the authors propose a segmentation technique based on the best local trigonometric basis. They show by means of real data examples that the entropy criterion which achieves the most parsimonious representation of a signal results in an overly-fine segmentation of the ECG signal, and thus establish the need for a more comprehensive criterion. The authors introduce a novel best basis search criterion which is based on a linear combination of the entropy measure and a local measure of smoothness and curvature. They tested the algorithm on the MIT-BIH arrythmia database.
基于特征的心电信号分割
心电信号的自动分割在临床和研究中都很重要。过去的算法依赖于详细启发式的结合。在此,作者提出了一种基于最佳局部三角基的分割技术。他们通过实际数据实例表明,实现信号最简洁表示的熵准则会导致心电信号分割过于精细,因此需要一个更全面的准则。提出了一种基于熵测度与局部光滑度和曲率测度的线性组合的最佳基搜索准则。他们在MIT-BIH心律失常数据库中测试了该算法。
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