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An approach for human identification based on time and frequency domain features extracted from ECG signals

机译:一种基于从心电图信号中提取的时域和频域特征的人类识别方法

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摘要

This paper presents an effective algorithm for human identification using time and frequency domain features extracted from electrocardiogram (ECG) signal. Instead of directly using the ECG data of a person as the feature, first, it is shown that a few number of reflection coefficients extracted from the autocorrelation function of the data can efficiently perform the recognition task. In frequency domain, discrete cosine transform (DCT) based feature is employed, which offers even a better recognition performance. It is found that the proposed time and frequency domain features demonstrate a high within class compactness and between class separability. Prior to feature extraction, a pre-processing scheme is incorporated to reduce the effect of different noises and artifacts. For the purpose of recognition, a linear discriminant based classifier is employed, where the two features are jointly utilized. The proposed human identification scheme has been tested on standard ECG databases and high recognition accuracy is achieved with an extremely low feature dimension.
机译:本文提出了一种使用从心电图(ECG)信号中提取的时域和频域特征进行人体识别的有效算法。首先,代替直接使用人的ECG数据作为特征,这表明从数据的自相关函数提取的少量反射系数可以有效地执行识别任务。在频域中,采用了基于离散余弦变换(DCT)的功能,它甚至提供了更好的识别性能。发现所提出的时域和频域特征证明了类内部的紧凑性和类之间的可分离性。在特征提取之前,要结合预处理方案以减少不同噪声和伪像的影响。为了识别的目的,使用基于线性判别的分类器,其中两个特征被联合利用。提议的人类识别方案已经在标准ECG数据库上进行了测试,并且以极低的特征尺寸实现了高识别精度。

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