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Multipoint ECG Signal Extraction on Palms and Figures for Human Identification System
by
Al-Ghnimi, Sami
, Livin, Joel
, Wahid, Gulam
, Jamaludeen
in
Accuracy
/ Algorithms
/ Biometrics
/ Data acquisition
/ Datasets
/ Fingers
/ Real time
/ Signal averaging
/ Template matching
2024
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Multipoint ECG Signal Extraction on Palms and Figures for Human Identification System
by
Al-Ghnimi, Sami
, Livin, Joel
, Wahid, Gulam
, Jamaludeen
in
Accuracy
/ Algorithms
/ Biometrics
/ Data acquisition
/ Datasets
/ Fingers
/ Real time
/ Signal averaging
/ Template matching
2024
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Multipoint ECG Signal Extraction on Palms and Figures for Human Identification System
Journal Article
Multipoint ECG Signal Extraction on Palms and Figures for Human Identification System
2024
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Overview
The ECG signal contain vital information for cardiac disease which is one of main cause of catastrophic mortality. In conventional technique, the signals are extracted through different points located on the limbs and surface of the chest. The biological impedance of human body eliminates any practical means of making fake copies of the relevant physiological traits. Moreover, this method needs the complex data acquisition system and apparatus as well as inconvenience way of acquisition of signal at the chest. Hence, there is a demand to find out the promising alternative technique to extract the ECG signals in more convenient way with high accuracy. In this paper, the real-time ECG monitor has been developed to extract the signals from the multipoint on the hands and fingers. Placement of the electrodes are done based on the acupressure point on palms and fingers. A total of 120 volunteers were investigated to develop the ECG database as the development dataset. This work uses the template matching algorithm and distance classification method to analyze and to find the best similarities between the developed dataset of ECG biometric signals to improve the identification rate. In order to lessen the noise that was recorded with the ECG signals, signal averaging was used to create ECG databases and templates. The recognition rate rose to 98% accuracy on the development dataset when the prescreening procedure was introduced to create a combined system model. ECG biometric model was created by combining the two models and using the development dataset's results. The algorithm was applied on the entire developed ECG dataset and 96% of accuracy rate was achieved in identification.
Publisher
Engineering and Scientific Research Groups
Subject
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