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Extraction of Linear and Non-Linear Features of Electrocardiogram Signal and Classification

机译:萃取心电图信号和分类的线性和非线性特征

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ECG signal for a private creature is totally different because of the distinctive heart structure. The ambition of feature extraction of electrocardiogram signal would permit productive detection of irregularities and economic projection due to any kind of heart confusion. Some dominant feature options are going to be extracted from ECG signals namely frequency, mean, median, skewness, kurtosis, standard deviation, different kinds of norms and so on. So, there is a need for strong and robust mathematical model to extract such helpful parameters. This research work is related to an associate degree reconciling mathematical analysis model i.e. Hilbert Huang Transform (HHT). The Hilbert-Huang transform technique is enforced to evaluate the nonlinear and non-stationary representation of the graphical signal. It is distinctive and totally disparate from the current ways of investigation and will not crave a prior function supporting information. The efficiency of the planned theme is confirmed through different classification techniques.
机译:对于私人生物ECG信号是因为独特的心脏结构完全不同。心电图信号的特征提取的野心将允许违规和经济预测的生产检测所导致的任何类型的心脏困惑。一些主要的功能选项都将被从心电图提取的信号频率,即,平均值,中位数,偏度,峰度,标准偏差,不同种类的规范等等。因此,有必要为强劲稳健的数学模型,以提取有用的等参数。这项研究工作是关系到副学士学位调和的数学分析模型,即希尔伯特 - 黄转换(HHT)。希尔伯特 - 黄变换技术被强制为评估非线性和图形信号的非平稳表示。它是独特的,并从调查的当前如何完全不同的,并不会渴望事先功能支持信息。该计划的主题的效率是通过不同的分类方法证实。

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