Individual identification based on chaotic electrocardiogram signals during muscular exercise

An electrocardiogram (ECG) records changes in the electric potential of cardiac cells using a noninvasive method. Previous studies have shown that each person's cardiac signal possesses unique characteristics. Thus, researchers have attempted to use ECG signals for personal identification. Howe...

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Bibliographic Details
Published inIET biometrics Vol. 3; no. 4; pp. 257 - 266
Main Authors Lin, Shyan-Lung, Chen, Ching-Kun, Lin, Chun-Liang, Yang, Wen-Chan, Chiang, Cheng-Tang
Format Journal Article
LanguageEnglish
Published Stevenage The Institution of Engineering and Technology 01.12.2014
John Wiley & Sons, Inc
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Summary:An electrocardiogram (ECG) records changes in the electric potential of cardiac cells using a noninvasive method. Previous studies have shown that each person's cardiac signal possesses unique characteristics. Thus, researchers have attempted to use ECG signals for personal identification. However, most studies verify results using ECG signals taken from databases which are obtained from subjects under the condition of rest. Therefore, the extraction and analysis of a subject's ECG typically occurs in the resting state. This study presents experiments that involve recording ECG information after the heart rate of the subjects was increased through exercise. This study adopts the root mean square value, nonlinear Lyapunov exponent, and correlation dimension to analyse ECG data, and uses a support vector machine (SVM) to classify and identify the best combination and the most appropriate kernel function of a SVM. Results show that the successful recognition rate exceeds 80% when using the nonlinear SVM with a polynomial kernel function. This study confirms the existence of unique ECG features in each person. Even in the condition of exercise, chaotic theory can be used to extract specific biological characteristics, confirming the feasibility of using ECG signals for biometric verification.
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ISSN:2047-4938
2047-4946
2047-4946
DOI:10.1049/iet-bmt.2013.0014