Verification and Identification in ECG biometric on large-scale
Scagnetto Arjuna

TL;DR
This paper demonstrates that ECG biometrics can be effectively verified and identified at large scale using deep learning models, establishing a standardized benchmark for evaluation.
Contribution
It introduces a large-scale evaluation framework for ECG biometrics, showing the effectiveness of waveform-based deep learning models and providing a standardized benchmarking protocol.
Findings
High verification accuracy at strict FAR thresholds
Deep learning models significantly improve performance over simple features
Large-scale testing reveals ECG's individual biometric signature
Abstract
This work studies electrocardiogram (ECG) biometrics at large scale, directly addressing a critical gap in the literature: the scarcity of large-scale evaluations with operational metrics and protocols that enable meaningful standardization and comparison across studies. We show that identity information is already present in tabular representations (fiducial features): even a simple MLP-based embedding network yields non-trivial performance, establishing a strong baseline before waveform modeling. We then adopt embedding-based deep learning models (ArcFace), first on features and then on ECG waveforms, showing a clear performance jump when moving from tabular inputs to waveforms, and a further gain with larger training sets and consistent normalization across train/val/test. On a large-scale test set, verification achieves high TAR at strict FAR thresholds (TAR=0.908 @ FAR=1e-3;…
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Taxonomy
TopicsECG Monitoring and Analysis · Cardiac electrophysiology and arrhythmias · Wireless Body Area Networks
