Master Thesis - Continuous Authentication using Inertial-Sensors of Smartphones and Deep Learning
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Updated
Sep 17, 2019 - Jupyter Notebook
Master Thesis - Continuous Authentication using Inertial-Sensors of Smartphones and Deep Learning
This project, proposes a methodology for continuous implicit authentication of smartphones users, using the navigation data, in order to improve the security and ensure the privacy of sensitive personal data.
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This repository contains the full code-base – including a recorded demonstration of the application – of a simple prototype implemented as a proof of concept for the thesis – Continuous authentication using "something only you can do" – submitted in fulfillment of the requirements for the degree of Master of Science in Software Design at the IT …
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This repository includes the code for the published paper "CNN-Based Continuous Authentication of Smartphones Using Mobile Sensors." It features the model architecture, data collection, data preprocessing, and methods for feature extraction.
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