Analysis of ECG biosignal recognition for client identifiction

Hadri Hussain, C. Ting, Fuad Numan, M. N. Ibrahim, Nur Fariza Izan, M. M. Mohammad, Hadrina Sh-Hussain
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引用次数: 3

Abstract

The most common application for a recognition system of speech signal, finger print, iris, etc. are used for biometrie applications. While other biometric signals like electrocardiogram (ECG) and the Heart Sound (HS) are generally used to identify cluster-related diseases. Nonetheless, performance of a traditional biometric system can be easily compromised as it is prone to spoof attack. This paper proposes a unimodal biometric security system that is based on ECG. Physiological biometrics characteristic are based on a human body's, such as the hand geometry, face, palm, ECG and even brain signal. The biosignal data collected by a biometric system would initially be segmented. The Mel-Frequency Cepstral Coefficients (MFCC) method is used for extracting each segmented feature. The Hidden Markov Model (HMM) is used to model the client, and categorize unknown input based on the model. The recognition system involved training and testing of the collected features, known as Client Identification (CID). In this paper, 20 clients were tested with this developed system. The best overall performance for 20 clients at 16 kHz was 71.4% for ECG trained at 50% of the training data, while the worst overall performance was 66.6% for 30% training data.
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心电生物信号识别在病人身份识别中的应用分析
识别系统中最常见的应用有语音信号、指纹、虹膜等,用于生物特征的应用。而其他生物特征信号,如心电图(ECG)和心音(HS)通常用于识别群集相关疾病。然而,由于传统的生物识别系统容易受到欺骗攻击,其性能很容易受到影响。提出了一种基于心电的单峰生物识别安全系统。生理生物特征是基于人体的特征,如手的几何形状、面部、手掌、心电图甚至大脑信号。生物识别系统收集的生物信号数据最初会被分割。使用Mel-Frequency倒谱系数(MFCC)方法提取每个分割的特征。利用隐马尔可夫模型(HMM)对客户端进行建模,并根据模型对未知输入进行分类。识别系统包括对收集到的特征进行训练和测试,称为客户识别(CID)。本文对20个客户端进行了测试。在16 kHz时,20个客户在50%训练数据下的最佳整体表现为71.4%,而在30%训练数据下的最差整体表现为66.6%。
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