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Spectrum approach based classification of ECG signal

机译:基于频谱方法的心电信号分类

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The heart is one of the crucial parts of a human being. The heart produces electrical signals and these cycles of electrical signals are called as cardiac cycles. The graphical recording of the cardiac cycle produced by an Electrocardiograph is called as Electro cardio gram (ECG) signal. The Electrocardiogram signal is used to diagnose the irregularity in heart beat. Automatic classification of ECG signals has applications in human-computer interaction, as well as in clinical application such as detection of key indicators of the onset of the certain illness. In this work an algorithm has been develop to detect the five abnormal beat signals includes Left bundle branch block beat (LBBB), Right bundle branch block beat (RBBB), Premature Ventricular Contraction (PVC), Atrial Premature Beat (APB) and Nodal (junction) Premature Beat (NPB) along with the normal beat. In order to prepare an appropriate input vector for the neural classifier several pre processing stages have been applied. Tri spectrum is used to extract features from the ECG signal. Preprocessing and the classification of ECG signals is done using Forward Feed Neural Network Finally, the MIT-BIH [8] database is used to evaluate the proposed algorithm.
机译:心脏是人类至关重要的部分之一。心脏产生电信号,这些电信号周期称为心脏周期。心电图仪产生的心动周期的图形记录称为心电图(ECG)信号。心电图信号用于诊断心律不齐。 ECG信号的自动分类已应用于人机交互以及临床应用中,例如检测某些疾病发作的关键指标。在这项工作中,已经开发出一种算法来检测五个异常搏动信号,包括左束支传导阻滞(LBBB),右束支传导阻滞(RBBB),室性早搏(PVC),房性早搏(APB)和结节(早搏(NPB)以及正常搏动。为了为神经分类器准备合适的输入向量,已经应用了几个预处理阶段。三频谱用于从ECG信号中提取特征。使用前馈神经网络对心电信号进行预处理和分类。最后,使用MIT-BIH [8]数据库对所提出的算法进行评估。

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