AccLock: Unlocking Identity with Heartbeat Using In-Ear Accelerometers
Lei Wang, Jiangxuan Shen, Xi Zhang, Dalin Zhang, Jingyu Li + 4 more
TLDR
AccLock passively authenticates users via unique in-ear heartbeat signals captured by accelerometers, overcoming limitations of prior systems.
Key contributions
- Proposes AccLock, a passive, zero-involvement user authentication system using in-ear BCG signals.
- Designs a two-stage denoising scheme to suppress inherent and sporadic interference in BCG signals.
- Introduces HIDNet, a disentanglement-based deep learning model for separating user-specific features.
- Develops a scalable Siamese network framework, eliminating the need for per-user classifier training.
Why it matters
This paper addresses critical limitations in earphone-based authentication, offering a truly passive and robust solution. By leveraging in-ear accelerometers and advanced deep learning, AccLock provides a secure and user-friendly method for identity verification. This paves the way for more seamless and ubiquitous biometric security.
Original Abstract
The widespread use of earphones has enabled various sensing applications, including activity recognition, health monitoring, and context-aware computing. Among these, earphone-based user authentication has become a key technique by leveraging unique biometric features. However, existing earphone-based authentication systems face key limitations: they either require explicit user interaction or active speaker output, or suffer from poor accessibility and vulnerability to environmental noise, which hinders large-scale deployment. In this paper, we propose a passive authentication system, called AccLock, which leverages distinctive features extracted from in-ear BCG signals to enable secure and unobtrusive user verification. Our system offers several advantages over previous systems, including zero-involvement for both the device and the user, ubiquitous, and resilient to environmental noise. To realize this, we first design a two-stage denoising scheme to suppress both inherent and sporadic interference. To extract user-specific features, we then propose a disentanglement-based deep learning model, HIDNet, which explicitly separates user-specific features from shared nuisance components. Lastly, we develop a scalable authentication framework based on a Siamese network that eliminates the need for per-user classifier training. We conduct extensive experiments with 33 participants, achieving an average FAR of 3.13% and FRR of 2.99%, which demonstrates the practical feasibility of AccLock.
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