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Verification based ECG biometrics with cardiac irregular conditions using heartbeat level and segment level information fusion

机译:使用心跳水平和分段水平信息融合的基于验证的心电图生物测定法,适用于心脏不规则状况

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We propose an ECG based robust human verification system for both healthy and cardiac irregular conditions using the heartbeat level and segment level information fusion. At the heartbeat level, we first propose a novel beat normalization and outlier removal algorithm after peak detection to extract normalized representative beats. Then after principal component analysis (PCA), we apply linear discriminant analysis (LDA) and within-class covariance normalization (WCCN) for beat variability compensation followed by cosine similarity and Snorm as scoring. At the segment level, we adopt the hierarchical Dirichlet process auto-regressive hidden Markov model (HDP-AR-HMM) in the Bayesian non-parametric framework for unsupervised joint segmentation and clustering without any peak detection. It automatically decodes each raw signal into a string vector. We then apply n-gram language model and hypothesis testing for scoring. Combining the aforementioned two subsystems together further improved the performance and outperformed the PCA baseline by 25% relatively on the PTB database.
机译:我们提出了一种基于心电图的健壮的人类验证系统,适用于使用心跳水平和段水平信息融合的健康和心脏不规则状况。在心跳级别,我们首先提出一种新的心跳归一化和峰值检测后的异常值消除算法,以提取归一化的代表性心跳。然后,在进行主成分分析(PCA)之后,我们应用线性判别分析(LDA)和类内协方差归一化(WCCN)进行拍差变异性补偿,然后进行余弦相似度和Snorm评分。在细分级别,我们采用贝叶斯非参数框架中的分层Dirichlet过程自回归隐藏马尔可夫模型(HDP-AR-HMM),用于无监督的联合细分和聚类,而无需任何峰值检测。它会自动将每个原始信号解码为字符串向量。然后,我们应用n-gram语言模型和假设检验进行评分。将上述两个子系统组合在一起,可以进一步提高性能,并且在PTB数据库上的性能比PCA基准高出25%。

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