The electrocardiogram (ECG) signal used for diagnosis and patient monitoring , has recently emerged as a biometric recognition tool. Indeed, ECG signal changes from one person to another according to health status, heart geometry and anatomy among other factors. This paper forms a comparative study between different identification techniques and their performances. Previous works in this field referred to methodologies implementing either set of fidu-cial or set non-fiducial features. In this study we show a comparison of the same data using a fiducial feature set and a non-fiducial feature set based on statistical calculation of wavelet coefficient. High identification rates were measured in both cases, non-fiducial using Discrete Meyer (dmey) wavelet outperformed the rest at 98.65.
CITATION STYLE
Diab, M. O., Seif, A., El-Abed, M., & Sabbah, M. (2018). Individual Identification Using ECG SignalsW. Journal of Computer and Communications, 06(01), 74–80. https://doi.org/10.4236/jcc.2018.61008
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