Bag of On-Phone ANNs to Secure IoT Objects Using Wearable and Smartphone Biometrics

IEEE Transactions on Dependable and Secure Computing(2023)

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摘要
The introduction of the Internet of Things (IoT) has made several emerging applications, from financial transactions to property access, possible through IoT-connected smart wearables (smartwatches). This creates an immediate need for an authentication system that can validate a user seamlessly, compared to knowledge-based approaches. In this work, we present an implicit authentication system that utilizes a bag of on-phone artificial neural network (ANN) models to validate a user based on the availability of three soft-biometrics (heart rate, gait, and breathing patterns) collected from smartphones and Fitbits. We find that using all three biometrics we can achieve an average accuracy of up to $.973 \pm . 004$ . Next, we implement the bag of models on smartphones using Google's TensorFlow Lite framework-supported TFL Auth application, which requires around 56-65 KB memory and can verify a user in 5 seconds. Finally, we evaluate the system TFL Auth using two cohorts of 25 subjects in total, and we find that the system has average understandability and importance scores of around 4.0 and 4.3 on a 1 – 5 scale.
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关键词
Audio analytic,breathing,implicit authentication,TensorFlow,wearable authentication
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