This letter presents a novel framework for continuous user authentication of mobile devices based on gait analysis, exploiting inertial sensors and Recurrent Neural Network for deep-learning based classification. The proposed framework handles all the continuous authentication stages, starting from data collection to data preprocessing, classification, and policy enforcement. The letter will emphasize the data analysis aspects, discussing the methodologies used to improve the quality of classification, including data augmentation and a sliding window interval approach for improved training. Furthermore, will be discussed the enforcement, which is based on the Usage Control paradigm for continuous policy enforcement. A set of real experiments will demonstrate the effectiveness and efficiency of the proposed framework.
Using recurrent neural networks for continuous authentication through gait analysis
Giorgi G;Saracino A;Martinelli F
2021
Abstract
This letter presents a novel framework for continuous user authentication of mobile devices based on gait analysis, exploiting inertial sensors and Recurrent Neural Network for deep-learning based classification. The proposed framework handles all the continuous authentication stages, starting from data collection to data preprocessing, classification, and policy enforcement. The letter will emphasize the data analysis aspects, discussing the methodologies used to improve the quality of classification, including data augmentation and a sliding window interval approach for improved training. Furthermore, will be discussed the enforcement, which is based on the Usage Control paradigm for continuous policy enforcement. A set of real experiments will demonstrate the effectiveness and efficiency of the proposed framework.File | Dimensione | Formato | |
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