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Recognition of arrhythmic electrocardiogram using wavelet based feature extraction

机译:基于小波特征提取的心律失常心电图识别

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Arrhythmia is one of the most common cardiac diseases. Efficient methods of detecting arrhythmia have been proposed in literatures. Our study proposes a unique feature extraction approach with entropy and Hjorth descriptor to classify a set of ECG signals into normal and arrhythmic with a considerable amount of accuracy. The conventional approach involving wavelet decomposition as the primary feature extraction method yields classification accuracy of 81.8%. The method proposed in the study using entropy and Hjorth descriptor provides higher classification rate at 82.9%. Our study is validated by a reliable dataset.
机译:心律失常是最常见的心脏病之一。在文献中已经提出了检测心律不齐的有效方法。我们的研究提出了一种具有熵和Hjorth描述符的独特特征提取方法,以相当大的精度将一组ECG信号分类为正常和心律不齐。以小波分解为主要特征提取方法的传统方法的分类精度为81.8%。在研究中提出的使用熵和Hjorth描述符的方法提供了更高的分类率,为82.9%。我们的研究得到了可靠数据集的验证。

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