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A Clustering Approach to Construct Multi-scale Overcomplete Dictionaries for ECG Modeling

机译:一种用于ECG建模的多尺度超完备词典的聚类方法

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The electrocardiogram (ECG) is the main biomedical signal used to diagnose and monitor cardiac pathologies. A typical ECG is composed of quasi-periodic activations (the QRS complexes, and the P and T waves) and periods of inactivity, plus noise and interferences. The sparse nature of the ECG has lead to the development of many compressed sensing (CS) and sparsity-aware ECG signal processing algorithms. In order to attain a good performance, these methods require appropriate dictionaries, and several on-line dictionary construction approaches have been devised. However, all of them require a substantial computational cost and the derived dictionaries are composed of atoms which may not be representative of real-world signals. In this work, we describe an efficient method for off-line construction of an overcomplete and multi-scale dictionary using a clustering-based approach. The resulting dictionary, whose atoms are the most representative waveforms from the training set, is then used to obtain a sparse representation of the ECG signal. Simulations on real-world records from Physionet's PTB database show the good performance of the proposed approach.
机译:心电图(ECG)是用于诊断和监测心脏病变的主要生物医学信号。典型的ECG由准周期激活(QRS络合物以及P波和T波)和不活动时间段以及噪声和干扰组成。 ECG的稀疏性质导致许多压缩感知(CS)和稀疏感知ECG信号处理算法的发展。为了获得良好的性能,这些方法需要适当的词典,并且已经设计了几种在线词典构建方法。但是,所有这些都需要大量的计算成本,并且派生的字典是由原子组成的,这些原子可能无法代表现实世界的信号。在这项工作中,我们描述了一种有效的方法,该方法使用基于聚类的方法离线构建一个不完整且多尺度的字典。然后使用所得到的字典(其原子是训练集中最具代表性的波形)来获取ECG信号的稀疏表示。对来自Physionet的PTB数据库的真实记录进行的仿真表明,该方法具有良好的性能。

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