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ECG Biometric Recognition: Review, System Proposal, and Benchmark Evaluation

Pietro Melzi, Rubén Tolosana, Rubén Vera-Rodríguez

2023IEEE Access47 citationsDOIOpen Access PDF

Abstract

ECGs have shown unique patterns to distinguish between different subjects and present important advantages compared to other biometric traits. However, the lack of public data and standard experimental protocols makes the evaluation and comparison of novel ECG methods difficult. In this study, we perform extensive analysis and comparison of different scenarios in ECG biometric recognition. We consider verification and identification tasks, single- and multi-session settings, and single- and multi-lead ECGs recorded with traditional and user-friendly devices. We also present ECGXtractor, a robust Deep Learning technology trained with an in-house large-scale database, and evaluate it with detailed experimental protocol and public databases. With the popular PTB database, we achieve Equal Error Rates of 0.14% and 2.06% in single- and multi-session verification. The results achieved prove the soundness of ECGXtractor across multiple scenarios and databases. We release the source code, experimental protocol details, and pre-trained models in GitHub to advance in the field.

Topics & Concepts

BiometricsComputer scienceSession (web analytics)Benchmark (surveying)Protocol (science)Identification (biology)SoundnessField (mathematics)Code (set theory)Machine learningData miningArtificial intelligenceAlternative medicinePure mathematicsBiologyMedicineMathematicsGeographyProgramming languagePathologyGeodesyWorld Wide WebBotanySet (abstract data type)ECG Monitoring and AnalysisEEG and Brain-Computer InterfacesAdvanced Malware Detection Techniques
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