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Analysis and extraction characteristic parameters of ECG signal in real-time for intelligent classification of cardiac arrhythmias

机译:心电激智能分类实时ECG信号的分析与提取特征参数

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In this paper various adaptive filters have been thoroughly applied to biomedical data processing in the aim to implement a barrier between noise reduction and preservation of the useful information. Electrocardiography (ECG) presents one of the most important indicators, which can be informed of the recognizing approaches to discover heart disease. Due to its inherent importance, it is interesting to develop new technique of prevention and processing medical information. The main goal is to extract necessary information on the state of the heart. The ECG signals are generally contaminated and infected by many parasites, which can be polluted, and in some cases make unrecognizable information. Therefore, an efficient process with good performance (accuracy, speed) is essential. In this papers we describe a comparative study between different applied adaptive filtering algorithms including Normalized Least Mean Square (LMS), Least Mean Square (NLMS), Recursive Least Square (RLS) and Kalman Filter (KF). The Percent Root-Mean-Squared Difference (PRD) and the Signal to Noise Ratio (SNR) are the two basic parameters that used to compare the performances of all algorithms.
机译:在本文中的各种自适应滤波器已被彻底应用于生物医学数据处理中,目的是实现降低噪声和的有用信息保存之间的屏障。心电图(ECG)呈现的最重要的指标之一,它可以识别该被告知接近发现心脏疾病。由于其固有的重要性,有趣的是,开发预防新的技术和处理医疗信息。主要目标是提取对心脏的状态所需的信息。心电图信号通常被污染,被许多寄生虫,可感染污染,在某些情况下使面目全非信息。因此,具有良好的性能(准确性,速度)的有效方法是必要的。在此论文中,我们描述不同的施加自适应滤波算法,包括归一化最小均方(LMS),最小均方(NLMS),递归最小二乘(RLS)和卡尔曼滤波器(KF)之间的比较研究。百分比根均平方差(PRD)和信噪比(SNR)是用于比较的所有算法的性能的两个基本参数。

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