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Cardioid graph based ECG biometric using compressed QRS complex

机译:基于心形图的心电图生物特征量的压缩QRS复合体

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In this paper, a Cardioid graph based feature extraction technique is applied to perform compressed Electrocardiogram (ECG) biometric at different physiological conditions. To the best of our knowledge, Cardioid graph based method has not been implemented on compressed ECG before. Another merit of this methodology is that no decompression of the compressed ECG signal is necessary before the recognition step. The QRS complexes obtained from the ECG signal is compressed using Discrete Wavelet Transform (DWT), followed by the Cardioid graph retrieval procedure. Compression is performed in three decomposition levels and with the first three Daubechies wavelets. Classification is conducted on all the three levels using Multilayer Perceptron (MLP) Neural Network. Maximum compression of 88.3% is achieved with an accuracy rate of 93.06%. For compression rate of 85%, the identification rate obtained is 95.3%. Highest recognition rate of 96.4% is attained when the compression ratio is 75%. The classification accuracy rates suggest that compressed ECG biometric in varying physiological conditions with Cardioid graph based feature extraction is feasible and is capable of producing a robust biometric system.
机译:在本文中,基于心形图的特征提取技术被应用于在不同生理条件下进行压缩心电图(ECG)生物测定。据我们所知,基于心形图的方法之前尚未在压缩ECG上实现。该方法的另一个优点是在识别步骤之前无需对压缩的ECG信号进行解压缩。从ECG信号获得的QRS复数使用离散小波变换(DWT)进行压缩,然后执行心形图检索过程。以三个分解级别和前三个Daubechies小波执行压缩。使用多层感知器(MLP)神经网络在所有三个级别上进行分类。最大压缩率达到88.3%,准确率达到93.06%。对于85%的压缩率,获得的识别率为95.3%。当压缩率为75%时,最高识别率为96.4%。分类准确率表明,在基于心形图的特征提取的变化生理条件下进行压缩的ECG生物测定是可行的,并且能够产生强大的生物测定系统。

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