Visible to the public Designing ECG-based physical unclonable function for security of wearable devices

TitleDesigning ECG-based physical unclonable function for security of wearable devices
Publication TypeConference Paper
Year of Publication2017
AuthorsYin, S., Bae, C., Kim, S. J., Seo, J. s
Conference Name2017 39th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC)
ISBN Number978-1-5090-2809-2
KeywordsArtificial neural networks, authentication, Band-pass filters, biometric authentication, biometrics (access control), composability, Cost function, cryptography, decryption engines, ECG database, ECG feature extraction, ECG-based physical unclonable function, electrocardiogram, Electrocardiography, encryption engines, feature extraction, Finite impulse response filters, intersubject Hamming distance, learning (artificial intelligence), machine learning algorithms, medical signal processing, Metrics, personal ECG signals, privacy, pubcrawl, Resiliency, Signal processing, signal processing security, wearable device security, wearables security
Abstract

As a plethora of wearable devices are being introduced, significant concerns exist on the privacy and security of personal data stored on these devices. Expanding on recent works of using electrocardiogram (ECG) as a modality for biometric authentication, in this work, we investigate the possibility of using personal ECG signals as the individually unique source for physical unclonable function (PUF), which eventually can be used as the key for encryption and decryption engines. We present new signal processing and machine learning algorithms that learn and extract maximally different ECG features for different individuals and minimally different ECG features for the same individual over time. Experimental results with a large 741-subject in-house ECG database show that the distributions of the intra-subject (same person) Hamming distance of extracted ECG features and the inter-subject Hamming distance have minimal overlap. 256-b random numbers generated from the ECG features of 648 (out of 741) subjects pass the NIST randomness tests.

URLhttp://ieeexplore.ieee.org/document/8037613/
DOI10.1109/EMBC.2017.8037613
Citation Keyyin_designing_2017