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Reconstruction Attacks in Template-Based ECG Biometric Recognition Systems | IEEE Journals & Magazine | IEEE Xplore

Reconstruction Attacks in Template-Based ECG Biometric Recognition Systems


Abstract:

The success of Internet of Things (IoT) services will be determined by how the security of the IoT devices and the networks to which they are connected can be guaranteed....Show More

Abstract:

The success of Internet of Things (IoT) services will be determined by how the security of the IoT devices and the networks to which they are connected can be guaranteed. Integrating biometric recognition technology into IoT systems has gained popularity as a means of accomplishing this objective. Electrocardiograms (ECGs) have become a promising biometric tool for security because their intrinsic and dynamic nature makes them difficult to steal and forge for replay attacks. However, as with other biometric-based security approaches, attacks on ECG biometric systems have been developed. This study examines the vulnerability of template-based ECG biometric systems to reconstruction attacks. These attacks involve exposing the biometric templates of registered subjects in a hacked database and attempting to reconstruct their ECGs to spoof the system. Both deep learning models and “heuristic” approaches are used to perform this task, depending on the intruder’s level of knowledge of the template construction. Several reconstruction attack strategies are proposed and evaluated for fiducial- and PCA-based systems using ECGs from the Physikalisch-Technische Bundesanstalt database of 285 subjects. The experimental results demonstrate a reconstruction similarity of at least 0.93 and an increase in the false-positive identification-error rate of more than 73%.
Published in: IEEE Internet of Things Journal ( Volume: 11, Issue: 8, 15 April 2024)
Page(s): 14971 - 14984
Date of Publication: 21 December 2023

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I. Introduction

The Internet of Things (IoT) has become increasingly important in various aspects of our daily lives. Continuous monitoring of patients’ health through IoT devices and pervasive communication and computation has the potential to enhance care and prevent life-threatening events in high-risk patients [1]. Using consumption insights provided by an electricity or water management system with IoT devices, we can identify waste points and adjust our usage accordingly, enabling transparency in our households [2]. In addition, IoT retail stores enable shoppers to add items to their carts in real-time and deduct the cost from their digital wallets, eliminating the need to wait in line at the checkout [3]. However, the success of these IoT services hinges on the ability to ensure the security of the IoT devices and the networks to which they are connected. Biometric recognition is considered to be a promising solution to fulfill the need, particularly when human-machine interaction is required [4], [5], [6].

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