ECG for blind identity verification in distributed systems

ICASSP(2011)

引用 13|浏览9
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摘要
This paper discusses ECG biometric recognition in a distributed system, such as smart cards. In a setting where every card is equipped with an ECG sensor to record heart beats from the fingers, and to subsequently perform identity verification, the interest is in protecting the card holder from a set of unknown/unseen biometric traits. Prior works have examined ECG biometrics in settings where a particular subject was to be identified among a set of enrollees. However, this treatment limits the applicability of this biometric. The Autocorrelation - Linear Discriminant Analysis (AC/LDA) is revisited, to propose a strategic extension of the methodology, in order to account for recognition among unknown individuals (blind verification). The discriminant is trained individually for every smart card, on the samples of the subject to be enrolled, as well as a generic dataset of ECG recordings. This enables the recognizer to protect the template against attacks by biometric samples that have not been used to train the discriminant. In addition, we present a methodology for the selection of the matching threshold, which targets to control false acceptance while being experimentally optimized for a particular smart card.
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关键词
smart cards,electrocardiography,heart beat recording,card holder protection,ecg biometric recognition,discriminant analysis,generic training,medical biometric traits,blind identity verification,autocorrelation,electrocardiogram,medical signal processing,smart card,ecg recording,biometric sample,linear discriminant analysis,biometrics (access control),ecg sensor,generic dataset,false acceptance control,distributed sensors,distributed system,matching threshold selection,correlation methods,correlation,testing
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