4.7 Article

Electrocardiogram Based Group Device Pairing for Wearables

Journal

IEEE TRANSACTIONS ON MOBILE COMPUTING
Volume 22, Issue 11, Pages 6394-6409

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TMC.2022.3200104

Keywords

Mobile health; fuzzy extractor; electrocardiogram (ECG); secure sketch; wireless body area network(WBAN); group secret key distribution

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This paper proposes an electrocardiogram (ECG) signals based group device pairing protocol to enhance the security and reduce the overhead of wearables. By designing a robust and lightweight fuzzy extractor and utilizing the trend of InterPulse Interval (IPI) from ECG signal to extract high-entropy keys, the protocol achieves secure and efficient group device association and dynamic update of group keys.
The widespread usage of wearables to provide healthcare services prompts the need for secure group communication among multiple devices using group keys. Gait-based group key establishment schemes are either vulnerable to video attacks, or fail to offer a secure group key update mechanism when group device changes. In this paper, we present an electrocardiogram (ECG) signals based group device pairing protocol, which can strengthen the security and reduce the overhead of wearables. Specifically, we first design a robust and lightweight fuzzy extractor that supports secure and efficient group device association between wearables. Meanwhile, we propose Improved Martingale Randomness Extraction (IMRE) algorithm, which utilizes the trend of InterPulse Interval (IPI) from ECG signal to extract high-entropy keys. Then we present a membership management mechanism that enables group key dynamic update when group device changes. Finally, we simulate our protocol and evaluate the accuracy and efficiency by various experiments. The experimental results demonstrate that the proposed work is robust and efficient, and the threat model-based security analysis shows that the proposed protocol can prevent both active and passive attacks.

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