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ECG biometric identification for general population using multiresolution analysis of DWT based features

机译:ECG生物识别,用于普通群体的普通群体使用基于DWT的特征

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Electrocardiogram (ECG) is not only a vital sign of life but also contains important clinical information and even identical features. Similarly, ECG provides various significant characteristics to advocate its use as a biometric system such as uniqueness, permanence and liveness detection etc. This research provides with the complete systematic approach of ECG based person identification for general population and consists of preprocessing of signal for noise reduction, feature extraction, feature selection and classifier performance. Feature extraction was performed by extraction of cardiac cycle followed by discrete wavelet transform (DWT) to extract wavelet coefficients as feature vector. Feature reduction is performed with best first search and classification is performed by using single nearest neighbor classifier. System is tested on three publicly available databases like MIT-BIH/Arrhythmia (MITDB), MIT-BIH/Normal Sinus Rhythm (NSRDB) and ECG-ID database (ECG-IDDB) including all subjects both separately and in combined manner. For arrhythmic database, identification rate of 93.1% was achieved by using proposed methodology. System is also tested on normal population based databases and accuracy of 99.4% is achieved using NSRDB database and 82.3% for a challenging ECG-ID database. The combined approach for general population results in accuracy of 94.4% with false acceptance rate (FAR) of 5.1% and false rejection rate of 0.1%, proving the effectiveness of suggested approach as non invasive for general population with better results as compared to previous approaches in literature.
机译:心电图(ECG)不仅是生命的重要迹象,而且还包含重要的临床信息甚至相同的特征。同样,心电图提供各种重要特征,以提倡其用作生物识别系统,例如唯一性,持久性和活力检测等。本研究提供了全面的ECG人口识别的完整系统方法,包括用于减压信号的预处理,功能提取,功能选择和分类器性能。通过提取心动循环,然后是离散小波变换(DWT)来提取小波系数作为特征向量的特征提取。特征减少是以最佳的第一搜索和分类执行,通过使用单个最近邻分类来执行。系统在三个公开可用的数据库上测试,如MIT-BIH /心律失常(MITDB),MIT-BIH /普通窦节奏(NSRDB)和ECG-ID数据库(ECG-IDB),包括单独和组合方式的所有受试者。对于心律失常数据库,通过使用所提出的方法实现了93.1%的识别率。系统也在正常群体基于数据库上进行测试,使用NSRDB数据库实现了99.4%的准确性,并且对于具有挑战性的ECG-ID数据库,实现了82.3%。一般人群的组合方法导致精度为94.4%,假验收率(远)为5.1%,假拒绝率为0.1%,证明了建议方法的有效性与普通人群的非侵入性,与以前的方法相比,具有更好的效果在文学中。

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