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Gait-Based Implicit Authentication Using Edge Computing and Deep Learning for Mobile Devices. | LitMetric

Gait-Based Implicit Authentication Using Edge Computing and Deep Learning for Mobile Devices.

Sensors (Basel)

Commonwealth Scientific and Industrial Research Organization (CSIRO), Sandy Bay 7005, Australia.

Published: July 2021

AI Article Synopsis

  • Implicit authentication mechanisms face challenges in accuracy for mobile devices due to their unique constraints and the limitations of behavioral biometrics.
  • The proposed architecture, Edge computing-based mobile Device Implicit Authentication (EDIA), uses edge computing and deep learning to enhance user authentication through gait biometric identification from accelerometer and gyroscope data.
  • Evaluation of EDIA shows a true positive rate of 97.77% and a false positive rate of 2%, indicating high accuracy even with limited data.

Article Abstract

Implicit authentication mechanisms are expected to prevent security and privacy threats for mobile devices using behavior modeling. However, recently, researchers have demonstrated that the performance of behavioral biometrics is insufficiently accurate. Furthermore, the unique characteristics of mobile devices, such as limited storage and energy, make it subject to constrained capacity of data collection and processing. In this paper, we propose an implicit authentication architecture based on edge computing, coined Edge computing-based mobile Device Implicit Authentication (EDIA), which exploits edge-based gait biometric identification using a deep learning model to authenticate users. The gait data captured by a device's accelerometer and gyroscope sensors is utilized as the input of our optimized model, which consists of a CNN and a LSTM in tandem. Especially, we deal with extracting the features of gait signal in a two-dimensional domain through converting the original signal into an image, and then input it into our network. In addition, to reduce computation overhead of mobile devices, the model for implicit authentication is generated on the cloud server, and the user authentication process also takes place on the edge devices. We evaluate the performance of EDIA under different scenarios where the results show that i) we achieve a true positive rate of 97.77% and also a 2% false positive rate; and ii) EDIA still reaches high accuracy with limited dataset size.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8271781PMC
http://dx.doi.org/10.3390/s21134592DOI Listing

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